Source code for statsmodels.tsa.arima_model

# Note: The information criteria add 1 to the number of parameters
#       whenever the model has an AR or MA term since, in principle,
#       the variance could be treated as a free parameter and restricted
#       This code does not allow this, but it adds consistency with other
#       packages such as gretl and X12-ARIMA

from __future__ import absolute_import
from statsmodels.compat.python import string_types, range, long
# for 2to3 with extensions

from datetime import datetime

import numpy as np
from scipy import optimize
from scipy.stats import t, norm
from scipy.signal import lfilter
from numpy import dot, log, zeros, pi
from numpy.linalg import inv

from statsmodels.tools.decorators import cache_readonly
import statsmodels.tsa.base.tsa_model as tsbase
import statsmodels.base.wrapper as wrap
from statsmodels.regression.linear_model import yule_walker, OLS
from statsmodels.tsa.tsatools import (lagmat, add_trend,
                                      _ar_transparams, _ar_invtransparams,
                                      _ma_transparams, _ma_invtransparams,
                                      unintegrate, unintegrate_levels)
from statsmodels.tsa.vector_ar import util
from statsmodels.tsa.ar_model import AR
from statsmodels.tsa.arima_process import arma2ma
from statsmodels.tools.numdiff import approx_hess_cs, approx_fprime_cs
from statsmodels.tsa.kalmanf import KalmanFilter

_armax_notes = r"""
    Notes
    -----
    If exogenous variables are given, then the model that is fit is

    .. math::

       \phi(L)(y_t - X_t\beta) = \theta(L)\epsilon_t

    where :math:`\phi` and :math:`\theta` are polynomials in the lag
    operator, :math:`L`. This is the regression model with ARMA errors,
    or ARMAX model. This specification is used, whether or not the model
    is fit using conditional sum of square or maximum-likelihood, using
    the `method` argument in
    :meth:`statsmodels.tsa.arima_model.%(Model)s.fit`. Therefore, for
    now, `css` and `mle` refer to estimation methods only. This may
    change for the case of the `css` model in future versions.
"""

_arma_params = \
"""endog : array-like
        The endogenous variable.
    order : iterable
        The (p,q) order of the model for the number of AR parameters,
        differences, and MA parameters to use.
    exog : array-like, optional
        An optional array of exogenous variables. This should *not* include a
        constant or trend. You can specify this in the `fit` method."""

_arma_model = "Autoregressive Moving Average ARMA(p,q) Model"

_arima_model = "Autoregressive Integrated Moving Average ARIMA(p,d,q) Model"

_arima_params = \
"""endog : array-like
        The endogenous variable.
    order : iterable
        The (p,d,q) order of the model for the number of AR parameters,
        differences, and MA parameters to use.
    exog : array-like, optional
        An optional array of exogenous variables. This should *not* include a
        constant or trend. You can specify this in the `fit` method."""

_predict_notes = """
        Notes
        -----
        Use the results predict method instead.
"""

_results_notes = """
        Notes
        -----
        It is recommended to use dates with the time-series models, as the
        below will probably make clear. However, if ARIMA is used without
        dates and/or `start` and `end` are given as indices, then these
        indices are in terms of the *original*, undifferenced series. Ie.,
        given some undifferenced observations::

         1970Q1, 1
         1970Q2, 1.5
         1970Q3, 1.25
         1970Q4, 2.25
         1971Q1, 1.2
         1971Q2, 4.1

        1970Q1 is observation 0 in the original series. However, if we fit an
        ARIMA(p,1,q) model then we lose this first observation through
        differencing. Therefore, the first observation we can forecast (if
        using exact MLE) is index 1. In the differenced series this is index
        0, but we refer to it as 1 from the original series.
"""

_predict = """
        %(Model)s model in-sample and out-of-sample prediction

        Parameters
        ----------
        %(params)s
        start : int, str, or datetime
            Zero-indexed observation number at which to start forecasting, ie.,
            the first forecast is start. Can also be a date string to
            parse or a datetime type.
        end : int, str, or datetime
            Zero-indexed observation number at which to end forecasting, ie.,
            the first forecast is start. Can also be a date string to
            parse or a datetime type. However, if the dates index does not
            have a fixed frequency, end must be an integer index if you
            want out of sample prediction.
        exog : array-like, optional
            If the model is an ARMAX and out-of-sample forecasting is
            requested, exog must be given. Note that you'll need to pass
            `k_ar` additional lags for any exogenous variables. E.g., if you
            fit an ARMAX(2, q) model and want to predict 5 steps, you need 7
            observations to do this.
        dynamic : bool, optional
            The `dynamic` keyword affects in-sample prediction. If dynamic
            is False, then the in-sample lagged values are used for
            prediction. If `dynamic` is True, then in-sample forecasts are
            used in place of lagged dependent variables. The first forecasted
            value is `start`.
        %(extra_params)s

        Returns
        -------
        %(returns)s
        %(extra_section)s
"""

_predict_returns = """predict : array
            The predicted values.

"""

_arma_predict = _predict % {"Model" : "ARMA",
                            "params" : """params : array-like
            The fitted parameters of the model.""",
                            "extra_params" : "",
                            "returns" : _predict_returns,
                            "extra_section" : _predict_notes}

_arma_results_predict = _predict % {"Model" : "ARMA", "params" : "",
                                    "extra_params" : "",
                                    "returns" : _predict_returns,
                                    "extra_section" : _results_notes}
_arima_extras = """typ : str {'linear', 'levels'}

            - 'linear' : Linear prediction in terms of the differenced
              endogenous variables.
            - 'levels' : Predict the levels of the original endogenous
              variables.\n"""

_arima_predict = _predict % {"Model" : "ARIMA",
                             "params" : """params : array-like
            The fitted parameters of the model.""",
                             "extra_params" : _arima_extras,
                             "returns" : _predict_returns,
                             "extra_section" : _predict_notes}

_arima_results_predict = _predict % {"Model" : "ARIMA",
                                     "params" : "",
                                     "extra_params" :_arima_extras,
                                     "returns" : _predict_returns,
                                     "extra_section" : _results_notes}

_arima_plot_predict_example = """        Examples
        --------
        >>> import statsmodels.api as sm
        >>> import matplotlib.pyplot as plt
        >>> import pandas as pd
        >>>
        >>> dta = sm.datasets.sunspots.load_pandas().data[['SUNACTIVITY']]
        >>> dta.index = pd.date_range(start='1700', end='2009', freq='A')
        >>> res = sm.tsa.ARMA(dta, (3, 0)).fit()
        >>> fig, ax = plt.subplots()
        >>> ax = dta.loc['1950':].plot(ax=ax)
        >>> fig = res.plot_predict('1990', '2012', dynamic=True, ax=ax,
        ...                        plot_insample=False)
        >>> plt.show()

        .. plot:: plots/arma_predict_plot.py
"""

_plot_extras = """alpha : float, optional
            The confidence intervals for the forecasts are (1 - alpha)%
        plot_insample : bool, optional
            Whether to plot the in-sample series. Default is True.
        ax : matplotlib.Axes, optional
            Existing axes to plot with."""

_plot_predict = ("""
        Plot forecasts
                      """ + '\n'.join(_predict.split('\n')[2:])) % {
    "params": "",
    "extra_params": _plot_extras,
    "returns": """fig : matplotlib.Figure
            The plotted Figure instance""",
    "extra_section": ('\n' + _arima_plot_predict_example +
                       '\n' + _results_notes)
}

_arima_plot_predict = ("""
        Plot forecasts
                      """ + '\n'.join(_predict.split('\n')[2:])) % {
    "params" : "",
    "extra_params" : _plot_extras,
    "returns" : """fig : matplotlib.Figure
            The plotted Figure instance""",
    "extra_section" : ('\n' + _arima_plot_predict_example +
                                   '\n' +
                                   '\n'.join(_results_notes.split('\n')[:3]) +
                              ("""
        This is hard-coded to only allow plotting of the forecasts in levels.
""") +
                              '\n'.join(_results_notes.split('\n')[3:]))
                      }


def cumsum_n(x, n):
    for _ in range(n):
        x = np.cumsum(x)

    return x


def _check_arima_start(start, k_ar, k_diff, method, dynamic):
    if start < 0:
        raise ValueError("The start index %d of the original series "
                         "has been differenced away" % start)
    elif (dynamic or 'mle' not in method) and start < k_ar:
        raise ValueError("Start must be >= k_ar for conditional MLE "
                         "or dynamic forecast. Got %d" % start)


def _get_predict_out_of_sample(endog, p, q, k_trend, k_exog, start, errors,
                               trendparam, exparams, arparams, maparams, steps,
                               method, exog=None):
    """
    Returns endog, resid, mu of appropriate length for out of sample
    prediction.
    """
    if q:
        resid = np.zeros(q)
        if start and 'mle' in method or (start == p and not start == 0):
            resid[:q] = errors[start-q:start]
        elif start:
            resid[:q] = errors[start-q-p:start-p]
        else:
            resid[:q] = errors[-q:]
    else:
        resid = None

    y = endog
    if k_trend == 1:
        # use expectation not constant
        if k_exog > 0:
            #TODO: technically should only hold for MLE not
            # conditional model. See #274.
            # ensure 2-d for conformability
            if np.ndim(exog) == 1 and k_exog == 1:
                # have a 1d series of observations -> 2d
                exog = exog[:, None]
            elif np.ndim(exog) == 1:
                # should have a 1d row of exog -> 2d
                if len(exog) != k_exog:
                    raise ValueError("1d exog given and len(exog) != k_exog")
                exog = exog[None, :]
            X = lagmat(np.dot(exog, exparams), p, original='in', trim='both')
            mu = trendparam * (1 - arparams.sum())
            # arparams were reversed in unpack for ease later
            mu = mu + (np.r_[1, -arparams[::-1]] * X).sum(1)[:, None]
        else:
            mu = trendparam * (1 - arparams.sum())
            mu = np.array([mu]*steps)
    elif k_exog > 0:
        X = np.dot(exog, exparams)
        #NOTE: you shouldn't have to give in-sample exog!
        X = lagmat(X, p, original='in', trim='both')
        mu = (np.r_[1, -arparams[::-1]] * X).sum(1)[:, None]
    else:
        mu = np.zeros(steps)

    endog = np.zeros(p + steps - 1)

    if p and start:
        endog[:p] = y[start-p:start]
    elif p:
        endog[:p] = y[-p:]

    return endog, resid, mu


def _arma_predict_out_of_sample(params, steps, errors, p, q, k_trend, k_exog,
                                endog, exog=None, start=0, method='mle'):
    (trendparam, exparams,
     arparams, maparams) = _unpack_params(params, (p, q), k_trend,
                                          k_exog, reverse=True)
    endog, resid, mu = _get_predict_out_of_sample(endog, p, q, k_trend, k_exog,
                                                  start, errors, trendparam,
                                                  exparams, arparams,
                                                  maparams, steps, method,
                                                  exog)

    forecast = np.zeros(steps)
    if steps == 1:
        if q:
            return mu[0] + np.dot(arparams, endog[:p]) + np.dot(maparams,
                                                                resid[:q])
        else:
            return mu[0] + np.dot(arparams, endog[:p])

    if q:
        i = 0  # if q == 1
    else:
        i = -1

    for i in range(min(q, steps - 1)):
        fcast = (mu[i] + np.dot(arparams, endog[i:i + p]) +
                 np.dot(maparams[:q - i], resid[i:i + q]))
        forecast[i] = fcast
        endog[i+p] = fcast

    for i in range(i + 1, steps - 1):
        fcast = mu[i] + np.dot(arparams, endog[i:i+p])
        forecast[i] = fcast
        endog[i+p] = fcast

    #need to do one more without updating endog
    forecast[steps - 1] = mu[steps - 1] + np.dot(arparams, endog[steps - 1:])
    return forecast


def _arma_predict_in_sample(start, end, endog, resid, k_ar, method):
    """
    Pre- and in-sample fitting for ARMA.
    """
    if 'mle' in method:
        fittedvalues = endog - resid  # get them all then trim
    else:
        fittedvalues = endog[k_ar:] - resid

    fv_start = start
    if 'mle' not in method:
        fv_start -= k_ar  # start is in terms of endog index
    fv_end = min(len(fittedvalues), end + 1)
    return fittedvalues[fv_start:fv_end]


def _unpack_params(params, order, k_trend, k_exog, reverse=False):
    p, q = order
    k = k_trend + k_exog
    maparams = params[k+p:]
    arparams = params[k:k+p]
    trend = params[:k_trend]
    exparams = params[k_trend:k]
    if reverse:
        return trend, exparams, arparams[::-1], maparams[::-1]
    return trend, exparams, arparams, maparams


def _unpack_order(order):
    k_ar, k_ma, k = order
    k_lags = max(k_ar, k_ma+1)
    return k_ar, k_ma, order, k_lags


def _make_arma_names(data, k_trend, order, exog_names):
    k_ar, k_ma = order
    exog_names = exog_names or []
    ar_lag_names = util.make_lag_names([data.ynames], k_ar, 0)
    ar_lag_names = [''.join(('ar.', i)) for i in ar_lag_names]
    ma_lag_names = util.make_lag_names([data.ynames], k_ma, 0)
    ma_lag_names = [''.join(('ma.', i)) for i in ma_lag_names]
    trend_name = util.make_lag_names('', 0, k_trend)

    exog_names = trend_name + exog_names + ar_lag_names + ma_lag_names
    return exog_names


def _make_arma_exog(endog, exog, trend):
    k_trend = 1  # overwritten if no constant
    if exog is None and trend == 'c':   # constant only
        exog = np.ones((len(endog), 1))
    elif exog is not None and trend == 'c':  # constant plus exogenous
        exog = add_trend(exog, trend='c', prepend=True, has_constant='raise')
    elif exog is not None and trend == 'nc':
        # make sure it's not holding constant from last run
        if exog.var() == 0:
            exog = None
        k_trend = 0
    if trend == 'nc':
        k_trend = 0
    return k_trend, exog


def _check_estimable(nobs, n_params):
    if nobs <= n_params:
        raise ValueError("Insufficient degrees of freedom to estimate")


[docs]class ARMA(tsbase.TimeSeriesModel): __doc__ = tsbase._tsa_doc % {"model" : _arma_model, "params" : _arma_params, "extra_params" : "", "extra_sections" : _armax_notes % {"Model" : "ARMA"}} def __init__(self, endog, order, exog=None, dates=None, freq=None, missing='none'): super(ARMA, self).__init__(endog, exog, dates, freq, missing=missing) # GH 2575 _endog = endog if hasattr(endog, 'ndim') else np.asarray(endog) if (_endog.ndim == 2 and _endog.shape[1] != 1) or _endog.ndim > 2: raise ValueError('endog must be 1-d or 2-d with 1 column') exog = self.data.exog # get it after it's gone through processing _check_estimable(len(self.endog), sum(order)) self.k_ar = k_ar = order[0] self.k_ma = k_ma = order[1] self.k_lags = max(k_ar, k_ma+1) if exog is not None: if exog.ndim == 1: exog = exog[:, None] k_exog = exog.shape[1] # number of exog. variables excl. const else: k_exog = 0 self.k_exog = k_exog self._orig_exog_names = self.exog_names def _fit_start_params_hr(self, order, start_ar_lags=None): """ Get starting parameters for fit. Parameters ---------- order : iterable (p,q,k) - AR lags, MA lags, and number of exogenous variables including the constant. start_ar_lags : int, optional If start_ar_lags is not None, rather than fitting an AR process according to best BIC, fits an AR process with a lag length equal to start_ar_lags. Returns ------- start_params : array A first guess at the starting parameters. Notes ----- If necessary, fits an AR process with the laglength start_ar_lags, or selected according to best BIC if start_ar_lags is None. Obtain the residuals. Then fit an ARMA(p,q) model via OLS using these residuals for a first approximation. Uses a separate OLS regression to find the coefficients of exogenous variables. References ---------- Hannan, E.J. and Rissanen, J. 1982. "Recursive estimation of mixed autoregressive-moving average order." `Biometrika`. 69.1. Durbin, J. 1960. "The Fitting of Time-Series Models." `Review of the International Statistical Institute`. Vol. 28, No. 3 """ p, q, k = order start_params = zeros((p+q+k)) # make copy of endog because overwritten endog = np.array(self.endog, np.float64) exog = self.exog if k != 0: ols_params = OLS(endog, exog).fit().params start_params[:k] = ols_params endog -= np.dot(exog, ols_params).squeeze() if q != 0: if p != 0: # make sure we don't run into small data problems in AR fit nobs = len(endog) if start_ar_lags is None: maxlag = int(round(12*(nobs/100.)**(1/4.))) if maxlag >= nobs: maxlag = nobs - 1 armod = AR(endog).fit(ic='bic', trend='nc', maxlag=maxlag) else: if start_ar_lags >= nobs: start_ar_lags = nobs - 1 armod = AR(endog).fit(trend='nc', maxlag=start_ar_lags) arcoefs_tmp = armod.params p_tmp = armod.k_ar # it's possible in small samples that optimal lag-order # doesn't leave enough obs. No consistent way to fix. if p_tmp + q >= len(endog): raise ValueError("Proper starting parameters cannot" " be found for this order with this " "number of observations. Use the " "start_params argument, or set " "start_ar_lags to an integer less than " "len(endog) - q.") resid = endog[p_tmp:] - np.dot(lagmat(endog, p_tmp, trim='both'), arcoefs_tmp) if p < p_tmp + q: endog_start = p_tmp + q - p resid_start = 0 else: endog_start = 0 resid_start = p - p_tmp - q lag_endog = lagmat(endog, p, 'both')[endog_start:] lag_resid = lagmat(resid, q, 'both')[resid_start:] # stack ar lags and resids X = np.column_stack((lag_endog, lag_resid)) coefs = OLS(endog[max(p_tmp + q, p):], X).fit().params start_params[k:k+p+q] = coefs else: start_params[k+p:k+p+q] = yule_walker(endog, order=q)[0] if q == 0 and p != 0: arcoefs = yule_walker(endog, order=p)[0] start_params[k:k+p] = arcoefs # check AR coefficients if p and not np.all(np.abs(np.roots(np.r_[1, -start_params[k:k + p]] )) < 1): raise ValueError("The computed initial AR coefficients are not " "stationary\nYou should induce stationarity, " "choose a different model order, or you can\n" "pass your own start_params.") # check MA coefficients elif q and not np.all(np.abs(np.roots(np.r_[1, start_params[k + p:]] )) < 1): raise ValueError("The computed initial MA coefficients are not " "invertible\nYou should induce invertibility, " "choose a different model order, or you can\n" "pass your own start_params.") # check MA coefficients return start_params def _fit_start_params(self, order, method, start_ar_lags=None): if method != 'css-mle': # use Hannan-Rissanen to get start params start_params = self._fit_start_params_hr(order, start_ar_lags) else: # use CSS to get start params func = lambda params: -self.loglike_css(params) #start_params = [.1]*(k_ar+k_ma+k_exog) # different one for k? start_params = self._fit_start_params_hr(order, start_ar_lags) if self.transparams: start_params = self._invtransparams(start_params) bounds = [(None,)*2]*sum(order) mlefit = optimize.fmin_l_bfgs_b(func, start_params, approx_grad=True, m=12, pgtol=1e-7, factr=1e3, bounds=bounds, iprint=-1) start_params = mlefit[0] if self.transparams: start_params = self._transparams(start_params) return start_params
[docs] def score(self, params): """ Compute the score function at params. Notes ----- This is a numerical approximation. """ return approx_fprime_cs(params, self.loglike, args=(False,))
[docs] def hessian(self, params): """ Compute the Hessian at params, Notes ----- This is a numerical approximation. """ return approx_hess_cs(params, self.loglike, args=(False,))
def _transparams(self, params): """ Transforms params to induce stationarity/invertability. Reference --------- Jones(1980) """ k_ar, k_ma = self.k_ar, self.k_ma k = self.k_exog + self.k_trend newparams = np.zeros_like(params) # just copy exogenous parameters if k != 0: newparams[:k] = params[:k] # AR Coeffs if k_ar != 0: newparams[k:k+k_ar] = _ar_transparams(params[k:k+k_ar].copy()) # MA Coeffs if k_ma != 0: newparams[k+k_ar:] = _ma_transparams(params[k+k_ar:].copy()) return newparams def _invtransparams(self, start_params): """ Inverse of the Jones reparameterization """ k_ar, k_ma = self.k_ar, self.k_ma k = self.k_exog + self.k_trend newparams = start_params.copy() arcoefs = newparams[k:k+k_ar] macoefs = newparams[k+k_ar:] # AR coeffs if k_ar != 0: newparams[k:k+k_ar] = _ar_invtransparams(arcoefs) # MA coeffs if k_ma != 0: newparams[k+k_ar:k+k_ar+k_ma] = _ma_invtransparams(macoefs) return newparams def _get_prediction_index(self, start, end, dynamic, index=None): method = getattr(self, 'method', 'mle') k_ar = getattr(self, 'k_ar', 0) k_diff = getattr(self, 'k_diff', 0) if start is None: if 'mle' in method and not dynamic: start = 0 else: start = k_ar start = self._index[start] start, end, out_of_sample, prediction_index = ( super(ARMA, self)._get_prediction_index(start, end, index)) # This replaces the _validate() call if 'mle' not in method and start < k_ar - k_diff: raise ValueError("Start must be >= k_ar for conditional " "MLE or dynamic forecast. Got %s" % start) # Other validation _check_arima_start(start, k_ar, k_diff, method, dynamic) return start, end, out_of_sample, prediction_index
[docs] def geterrors(self, params): """ Get the errors of the ARMA process. Parameters ---------- params : array-like The fitted ARMA parameters order : array-like 3 item iterable, with the number of AR, MA, and exogenous parameters, including the trend """ # start, end, out_of_sample, prediction_index = ( # self._get_prediction_index(start, end, index)) params = np.asarray(params) k_ar, k_ma = self.k_ar, self.k_ma k = self.k_exog + self.k_trend method = getattr(self, 'method', 'mle') if 'mle' in method: # use KalmanFilter to get errors (y, k, nobs, k_ar, k_ma, k_lags, newparams, Z_mat, m, R_mat, T_mat, paramsdtype) = KalmanFilter._init_kalman_state(params, self) errors = KalmanFilter.geterrors(y, k, k_ar, k_ma, k_lags, nobs, Z_mat, m, R_mat, T_mat, paramsdtype) if isinstance(errors, tuple): errors = errors[0] # non-cython version returns a tuple else: # use scipy.signal.lfilter y = self.endog.copy() k = self.k_exog + self.k_trend if k > 0: y -= dot(self.exog, params[:k]) k_ar = self.k_ar k_ma = self.k_ma (trendparams, exparams, arparams, maparams) = _unpack_params(params, (k_ar, k_ma), self.k_trend, self.k_exog, reverse=False) b, a = np.r_[1, -arparams], np.r_[1, maparams] zi = zeros((max(k_ar, k_ma))) for i in range(k_ar): zi[i] = sum(-b[:i+1][::-1]*y[:i+1]) e = lfilter(b, a, y, zi=zi) errors = e[0][k_ar:] return errors.squeeze()
[docs] def predict(self, params, start=None, end=None, exog=None, dynamic=False): method = getattr(self, 'method', 'mle') # don't assume fit #params = np.asarray(params) # will return an index of a date start, end, out_of_sample, _ = ( self._get_prediction_index(start, end, dynamic)) if out_of_sample and (exog is None and self.k_exog > 0): raise ValueError("You must provide exog for ARMAX") endog = self.endog resid = self.geterrors(params) k_ar = self.k_ar if exog is not None: # Note: we ignore currently the index of exog if it is available exog = np.asarray(exog) if self.k_exog == 1 and exog.ndim == 1: exog = exog[:, None] if out_of_sample != 0 and self.k_exog > 0: # we need the last k_ar exog for the lag-polynomial if self.k_exog > 0 and k_ar > 0 and not dynamic: # need the last k_ar exog for the lag-polynomial exog = np.vstack((self.exog[-k_ar:, self.k_trend:], exog)) if dynamic: if self.k_exog > 0: # need the last k_ar exog for the lag-polynomial exog_insample = self.exog[start - k_ar:, self.k_trend:] if exog is not None: exog = np.vstack((exog_insample, exog)) else: exog = exog_insample #TODO: now that predict does dynamic in-sample it should # also return error estimates and confidence intervals # but how? len(endog) is not tot_obs out_of_sample += end - start + 1 return _arma_predict_out_of_sample(params, out_of_sample, resid, k_ar, self.k_ma, self.k_trend, self.k_exog, endog, exog, start, method) predictedvalues = _arma_predict_in_sample(start, end, endog, resid, k_ar, method) if out_of_sample: forecastvalues = _arma_predict_out_of_sample(params, out_of_sample, resid, k_ar, self.k_ma, self.k_trend, self.k_exog, endog, exog, method=method) predictedvalues = np.r_[predictedvalues, forecastvalues] return predictedvalues
predict.__doc__ = _arma_predict
[docs] def loglike(self, params, set_sigma2=True): """ Compute the log-likelihood for ARMA(p,q) model Notes ----- Likelihood used depends on the method set in fit """ method = self.method if method in ['mle', 'css-mle']: return self.loglike_kalman(params, set_sigma2) elif method == 'css': return self.loglike_css(params, set_sigma2) else: raise ValueError("Method %s not understood" % method)
[docs] def loglike_kalman(self, params, set_sigma2=True): """ Compute exact loglikelihood for ARMA(p,q) model by the Kalman Filter. """ return KalmanFilter.loglike(params, self, set_sigma2)
[docs] def loglike_css(self, params, set_sigma2=True): """ Conditional Sum of Squares likelihood function. """ k_ar = self.k_ar k_ma = self.k_ma k = self.k_exog + self.k_trend y = self.endog.copy().astype(params.dtype) nobs = self.nobs # how to handle if empty? if self.transparams: newparams = self._transparams(params) else: newparams = params if k > 0: y -= dot(self.exog, newparams[:k]) # the order of p determines how many zeros errors to set for lfilter b, a = np.r_[1, -newparams[k:k + k_ar]], np.r_[1, newparams[k + k_ar:]] zi = np.zeros((max(k_ar, k_ma)), dtype=params.dtype) for i in range(k_ar): zi[i] = sum(-b[:i + 1][::-1] * y[:i + 1]) errors = lfilter(b, a, y, zi=zi)[0][k_ar:] ssr = np.dot(errors, errors) sigma2 = ssr/nobs if set_sigma2: self.sigma2 = sigma2 llf = -nobs/2.*(log(2*pi) + log(sigma2)) - ssr/(2*sigma2) return llf
[docs] def fit(self, start_params=None, trend='c', method="css-mle", transparams=True, solver='lbfgs', maxiter=500, full_output=1, disp=5, callback=None, start_ar_lags=None, **kwargs): """ Fits ARMA(p,q) model using exact maximum likelihood via Kalman filter. Parameters ---------- start_params : array-like, optional Starting parameters for ARMA(p,q). If None, the default is given by ARMA._fit_start_params. See there for more information. transparams : bool, optional Whether or not to transform the parameters to ensure stationarity. Uses the transformation suggested in Jones (1980). If False, no checking for stationarity or invertibility is done. method : str {'css-mle','mle','css'} This is the loglikelihood to maximize. If "css-mle", the conditional sum of squares likelihood is maximized and its values are used as starting values for the computation of the exact likelihood via the Kalman filter. If "mle", the exact likelihood is maximized via the Kalman Filter. If "css" the conditional sum of squares likelihood is maximized. All three methods use `start_params` as starting parameters. See above for more information. trend : str {'c','nc'} Whether to include a constant or not. 'c' includes constant, 'nc' no constant. solver : str or None, optional Solver to be used. The default is 'lbfgs' (limited memory Broyden-Fletcher-Goldfarb-Shanno). Other choices are 'bfgs', 'newton' (Newton-Raphson), 'nm' (Nelder-Mead), 'cg' - (conjugate gradient), 'ncg' (non-conjugate gradient), and 'powell'. By default, the limited memory BFGS uses m=12 to approximate the Hessian, projected gradient tolerance of 1e-8 and factr = 1e2. You can change these by using kwargs. maxiter : int, optional The maximum number of function evaluations. Default is 500. tol : float The convergence tolerance. Default is 1e-08. full_output : bool, optional If True, all output from solver will be available in the Results object's mle_retvals attribute. Output is dependent on the solver. See Notes for more information. disp : int, optional If True, convergence information is printed. For the default l_bfgs_b solver, disp controls the frequency of the output during the iterations. disp < 0 means no output in this case. callback : function, optional Called after each iteration as callback(xk) where xk is the current parameter vector. start_ar_lags : int, optional Parameter for fitting start_params. When fitting start_params, residuals are obtained from an AR fit, then an ARMA(p,q) model is fit via OLS using these residuals. If start_ar_lags is None, fit an AR process according to best BIC. If start_ar_lags is not None, fits an AR process with a lag length equal to start_ar_lags. See ARMA._fit_start_params_hr for more information. kwargs See Notes for keyword arguments that can be passed to fit. Returns ------- statsmodels.tsa.arima_model.ARMAResults class See Also -------- statsmodels.base.model.LikelihoodModel.fit : for more information on using the solvers. ARMAResults : results class returned by fit Notes ----- If fit by 'mle', it is assumed for the Kalman Filter that the initial unknown state is zero, and that the initial variance is P = dot(inv(identity(m**2)-kron(T,T)),dot(R,R.T).ravel('F')).reshape(r, r, order = 'F') """ k_ar = self.k_ar k_ma = self.k_ma # enforce invertibility self.transparams = transparams endog, exog = self.endog, self.exog k_exog = self.k_exog self.nobs = len(endog) # this is overwritten if method is 'css' # (re)set trend and handle exogenous variables # always pass original exog k_trend, exog = _make_arma_exog(endog, self.exog, trend) # Check has something to estimate if k_ar == 0 and k_ma == 0 and k_trend == 0 and k_exog == 0: raise ValueError("Estimation requires the inclusion of least one " "AR term, MA term, a constant or an exogenous " "variable.") # check again now that we know the trend _check_estimable(len(endog), k_ar + k_ma + k_exog + k_trend) self.k_trend = k_trend self.exog = exog # overwrites original exog from __init__ # (re)set names for this model self.exog_names = _make_arma_names(self.data, k_trend, (k_ar, k_ma), self._orig_exog_names) k = k_trend + k_exog # choose objective function if k_ma == 0 and k_ar == 0: method = "css" # Always CSS when no AR or MA terms self.method = method = method.lower() # adjust nobs for css if method == 'css': self.nobs = len(self.endog) - k_ar if start_params is not None: start_params = np.asarray(start_params) else: # estimate starting parameters start_params = self._fit_start_params((k_ar, k_ma, k), method, start_ar_lags) if transparams: # transform initial parameters to ensure invertibility start_params = self._invtransparams(start_params) if solver == 'lbfgs': kwargs.setdefault('pgtol', 1e-8) kwargs.setdefault('factr', 1e2) kwargs.setdefault('m', 12) kwargs.setdefault('approx_grad', True) mlefit = super(ARMA, self).fit(start_params, method=solver, maxiter=maxiter, full_output=full_output, disp=disp, callback=callback, **kwargs) params = mlefit.params if transparams: # transform parameters back params = self._transparams(params) self.transparams = False # so methods don't expect transf. normalized_cov_params = None # TODO: fix this armafit = ARMAResults(self, params, normalized_cov_params) armafit.mle_retvals = mlefit.mle_retvals armafit.mle_settings = mlefit.mle_settings return ARMAResultsWrapper(armafit)
# base class of "from_formula" is "class Model(object)"
[docs] @classmethod def from_formula(cls, formula, data, subset=None, drop_cols=None, *args, **kwargs): raise NotImplementedError("from_formula is not supported" " for ARMA models.")
#NOTE: the length of endog changes when we give a difference to fit #so model methods are not the same on unfit models as fit ones #starting to think that order of model should be put in instantiation...
[docs]class ARIMA(ARMA): __doc__ = tsbase._tsa_doc % {"model" : _arima_model, "params" : _arima_params, "extra_params" : "", "extra_sections" : _armax_notes % {"Model" : "ARIMA"}} def __new__(cls, endog, order, exog=None, dates=None, freq=None, missing='none'): p, d, q = order if d == 0: # then we just use an ARMA model return ARMA(endog, (p, q), exog, dates, freq, missing) else: mod = super(ARIMA, cls).__new__(cls) mod.__init__(endog, order, exog, dates, freq, missing) return mod def __getnewargs__(self): # using same defaults as in __init__ dates = getattr(self, 'dates', None) freq = getattr(self, 'freq', None) missing = getattr(self, 'missing', 'none') return ((self.endog), (self.k_lags, self.k_diff, self.k_ma), self.exog, dates, freq, missing) def __init__(self, endog, order, exog=None, dates=None, freq=None, missing='none'): p, d, q = order if d > 2: #NOTE: to make more general, need to address the d == 2 stuff # in the predict method raise ValueError("d > 2 is not supported") super(ARIMA, self).__init__(endog, (p, q), exog, dates, freq, missing) self.k_diff = d self._first_unintegrate = unintegrate_levels(self.endog[:d], d) self.endog = np.diff(self.endog, n=d) #NOTE: will check in ARMA but check again since differenced now _check_estimable(len(self.endog), p+q) if exog is not None: self.exog = self.exog[d:] if d == 1: self.data.ynames = 'D.' + self.endog_names else: self.data.ynames = 'D{0:d}.'.format(d) + self.endog_names # what about exog, should we difference it automatically before # super call? # Reset index orig_length = len(self._index) new_length = self.endog.shape[0] if self.data.row_labels is not None: self.data._cache['row_labels'] = ( self.data.row_labels[orig_length - new_length:]) if self._index is not None: if self._index_generated: self._index = self._index[:-(orig_length - new_length)] else: self._index = self._index[orig_length - new_length:] def _get_prediction_index(self, start, end, dynamic, index=None): method = getattr(self, 'method', 'mle') k_ar = getattr(self, 'k_ar', 0) k_diff = getattr(self, 'k_diff', 0) if start is None: if 'mle' in method and not dynamic: start = 0 else: start = k_ar start = self._index[start] elif isinstance(start, (int, long, np.integer)): start -= k_diff if start < 0: raise ValueError('The start index %d of the original series ' ' has been differenced away' % start) if isinstance(end, (int, long, np.integer)): end -= k_diff start, end, out_of_sample, prediction_index = ( super(ARIMA, self)._get_prediction_index(start, end, index)) # From _get_predict_end if 'mle' not in self.method and not dynamic: end -= k_ar # This replaces the _validate() call if 'mle' not in method and start < k_ar - k_diff: raise ValueError("Start must be >= k_ar for conditional " "MLE or dynamic forecast. Got %s" % start) # Other validation _check_arima_start(start, k_ar, k_diff, method, dynamic) return start, end, out_of_sample, prediction_index
[docs] def fit(self, start_params=None, trend='c', method="css-mle", transparams=True, solver='lbfgs', maxiter=500, full_output=1, disp=5, callback=None, start_ar_lags=None, **kwargs): """ Fits ARIMA(p,d,q) model by exact maximum likelihood via Kalman filter. Parameters ---------- start_params : array-like, optional Starting parameters for ARMA(p,q). If None, the default is given by ARMA._fit_start_params. See there for more information. transparams : bool, optional Whehter or not to transform the parameters to ensure stationarity. Uses the transformation suggested in Jones (1980). If False, no checking for stationarity or invertibility is done. method : str {'css-mle','mle','css'} This is the loglikelihood to maximize. If "css-mle", the conditional sum of squares likelihood is maximized and its values are used as starting values for the computation of the exact likelihood via the Kalman filter. If "mle", the exact likelihood is maximized via the Kalman Filter. If "css" the conditional sum of squares likelihood is maximized. All three methods use `start_params` as starting parameters. See above for more information. trend : str {'c','nc'} Whether to include a constant or not. 'c' includes constant, 'nc' no constant. solver : str or None, optional Solver to be used. The default is 'lbfgs' (limited memory Broyden-Fletcher-Goldfarb-Shanno). Other choices are 'bfgs', 'newton' (Newton-Raphson), 'nm' (Nelder-Mead), 'cg' - (conjugate gradient), 'ncg' (non-conjugate gradient), and 'powell'. By default, the limited memory BFGS uses m=12 to approximate the Hessian, projected gradient tolerance of 1e-8 and factr = 1e2. You can change these by using kwargs. maxiter : int, optional The maximum number of function evaluations. Default is 500. tol : float The convergence tolerance. Default is 1e-08. full_output : bool, optional If True, all output from solver will be available in the Results object's mle_retvals attribute. Output is dependent on the solver. See Notes for more information. disp : int, optional If True, convergence information is printed. For the default l_bfgs_b solver, disp controls the frequency of the output during the iterations. disp < 0 means no output in this case. callback : function, optional Called after each iteration as callback(xk) where xk is the current parameter vector. start_ar_lags : int, optional Parameter for fitting start_params. When fitting start_params, residuals are obtained from an AR fit, then an ARMA(p,q) model is fit via OLS using these residuals. If start_ar_lags is None, fit an AR process according to best BIC. If start_ar_lags is not None, fits an AR process with a lag length equal to start_ar_lags. See ARMA._fit_start_params_hr for more information. kwargs See Notes for keyword arguments that can be passed to fit. Returns ------- `statsmodels.tsa.arima.ARIMAResults` class See Also -------- statsmodels.base.model.LikelihoodModel.fit : for more information on using the solvers. ARIMAResults : results class returned by fit Notes ----- If fit by 'mle', it is assumed for the Kalman Filter that the initial unknown state is zero, and that the initial variance is P = dot(inv(identity(m**2)-kron(T,T)),dot(R,R.T).ravel('F')).reshape(r, r, order = 'F') """ mlefit = super(ARIMA, self).fit(start_params, trend, method, transparams, solver, maxiter, full_output, disp, callback, start_ar_lags, **kwargs) normalized_cov_params = None # TODO: fix this? arima_fit = ARIMAResults(self, mlefit._results.params, normalized_cov_params) arima_fit.k_diff = self.k_diff arima_fit.mle_retvals = mlefit.mle_retvals arima_fit.mle_settings = mlefit.mle_settings return ARIMAResultsWrapper(arima_fit)
[docs] def predict(self, params, start=None, end=None, exog=None, typ='linear', dynamic=False): # go ahead and convert to an index for easier checking if isinstance(start, (string_types, datetime)): # start = _index_date(start, self.data.dates) start, _, _ = self._get_index_label_loc(start) if isinstance(start, slice): start = start.start # Adjustment since _index was already changed to fit the # differenced endog. start += self.k_diff if typ == 'linear': if not dynamic or (start != self.k_ar + self.k_diff and start is not None): return super(ARIMA, self).predict(params, start, end, exog, dynamic) else: # need to assume pre-sample residuals are zero # do this by a hack q = self.k_ma self.k_ma = 0 predictedvalues = super(ARIMA, self).predict(params, start, end, exog, dynamic) self.k_ma = q return predictedvalues elif typ == 'levels': endog = self.data.endog if not dynamic: predict = super(ARIMA, self).predict(params, start, end, exog, dynamic) start, end, out_of_sample, _ = ( self._get_prediction_index(start, end, dynamic)) d = self.k_diff if 'mle' in self.method: start += d - 1 # for case where d == 2 end += d - 1 # add each predicted diff to lagged endog if out_of_sample: fv = predict[:-out_of_sample] + endog[start:end+1] if d == 2: #TODO: make a general solution to this fv += np.diff(endog[start - 1:end + 1]) levels = unintegrate_levels(endog[-d:], d) fv = np.r_[fv, unintegrate(predict[-out_of_sample:], levels)[d:]] else: fv = predict + endog[start:end + 1] if d == 2: fv += np.diff(endog[start - 1:end + 1]) else: k_ar = self.k_ar if out_of_sample: fv = (predict[:-out_of_sample] + endog[max(start, self.k_ar-1):end+k_ar+1]) if d == 2: fv += np.diff(endog[start - 1:end + 1]) levels = unintegrate_levels(endog[-d:], d) fv = np.r_[fv, unintegrate(predict[-out_of_sample:], levels)[d:]] else: fv = predict + endog[max(start, k_ar):end+k_ar+1] if d == 2: fv += np.diff(endog[start - 1:end + 1]) else: #IFF we need to use pre-sample values assume pre-sample # residuals are zero, do this by a hack if start == self.k_ar + self.k_diff or start is None: # do the first k_diff+1 separately p = self.k_ar q = self.k_ma k_exog = self.k_exog k_trend = self.k_trend k_diff = self.k_diff (trendparam, exparams, arparams, maparams) = _unpack_params(params, (p, q), k_trend, k_exog, reverse=True) # this is the hack self.k_ma = 0 predict = super(ARIMA, self).predict(params, start, end, exog, dynamic) if not start: start, _, _, _ = self._get_prediction_index( start, end, dynamic) start += k_diff self.k_ma = q return endog[start-1] + np.cumsum(predict) else: predict = super(ARIMA, self).predict(params, start, end, exog, dynamic) return endog[start-1] + np.cumsum(predict) return fv else: # pragma : no cover raise ValueError("typ %s not understood" % typ)
predict.__doc__ = _arima_predict
[docs]class ARMAResults(tsbase.TimeSeriesModelResults): """ Class to hold results from fitting an ARMA model. Parameters ---------- model : ARMA instance The fitted model instance params : array Fitted parameters normalized_cov_params : array, optional The normalized variance covariance matrix scale : float, optional Optional argument to scale the variance covariance matrix. Attributes ---------- aic : float Akaike Information Criterion :math:`-2*llf+2* df_model` where `df_model` includes all AR parameters, MA parameters, constant terms parameters on constant terms and the variance. arparams : array The parameters associated with the AR coefficients in the model. arroots : array The roots of the AR coefficients are the solution to (1 - arparams[0]*z - arparams[1]*z**2 -...- arparams[p-1]*z**k_ar) = 0 Stability requires that the roots in modulus lie outside the unit circle. bic : float Bayes Information Criterion -2*llf + log(nobs)*df_model Where if the model is fit using conditional sum of squares, the number of observations `nobs` does not include the `p` pre-sample observations. bse : array The standard errors of the parameters. These are computed using the numerical Hessian. df_model : array The model degrees of freedom = `k_exog` + `k_trend` + `k_ar` + `k_ma` df_resid : array The residual degrees of freedom = `nobs` - `df_model` fittedvalues : array The predicted values of the model. hqic : float Hannan-Quinn Information Criterion -2*llf + 2*(`df_model`)*log(log(nobs)) Like `bic` if the model is fit using conditional sum of squares then the `k_ar` pre-sample observations are not counted in `nobs`. k_ar : int The number of AR coefficients in the model. k_exog : int The number of exogenous variables included in the model. Does not include the constant. k_ma : int The number of MA coefficients. k_trend : int This is 0 for no constant or 1 if a constant is included. llf : float The value of the log-likelihood function evaluated at `params`. maparams : array The value of the moving average coefficients. maroots : array The roots of the MA coefficients are the solution to (1 + maparams[0]*z + maparams[1]*z**2 + ... + maparams[q-1]*z**q) = 0 Stability requires that the roots in modules lie outside the unit circle. model : ARMA instance A reference to the model that was fit. nobs : float The number of observations used to fit the model. If the model is fit using exact maximum likelihood this is equal to the total number of observations, `n_totobs`. If the model is fit using conditional maximum likelihood this is equal to `n_totobs` - `k_ar`. n_totobs : float The total number of observations for `endog`. This includes all observations, even pre-sample values if the model is fit using `css`. params : array The parameters of the model. The order of variables is the trend coefficients and the `k_exog` exognous coefficients, then the `k_ar` AR coefficients, and finally the `k_ma` MA coefficients. pvalues : array The p-values associated with the t-values of the coefficients. Note that the coefficients are assumed to have a Student's T distribution. resid : array The model residuals. If the model is fit using 'mle' then the residuals are created via the Kalman Filter. If the model is fit using 'css' then the residuals are obtained via `scipy.signal.lfilter` adjusted such that the first `k_ma` residuals are zero. These zero residuals are not returned. scale : float This is currently set to 1.0 and not used by the model or its results. sigma2 : float The variance of the residuals. If the model is fit by 'css', sigma2 = ssr/nobs, where ssr is the sum of squared residuals. If the model is fit by 'mle', then sigma2 = 1/nobs * sum(v**2 / F) where v is the one-step forecast error and F is the forecast error variance. See `nobs` for the difference in definitions depending on the fit. """ _cache = {} #TODO: use this for docstring when we fix nobs issue def __init__(self, model, params, normalized_cov_params=None, scale=1.): super(ARMAResults, self).__init__(model, params, normalized_cov_params, scale) self.sigma2 = model.sigma2 nobs = model.nobs self.nobs = nobs k_exog = model.k_exog self.k_exog = k_exog k_trend = model.k_trend self.k_trend = k_trend k_ar = model.k_ar self.k_ar = k_ar self.n_totobs = len(model.endog) k_ma = model.k_ma self.k_ma = k_ma df_model = k_exog + k_trend + k_ar + k_ma self._ic_df_model = df_model + 1 self.df_model = df_model self.df_resid = self.nobs - df_model self._cache = {}
[docs] @cache_readonly def arroots(self): return np.roots(np.r_[1, -self.arparams])**-1
[docs] @cache_readonly def maroots(self): return np.roots(np.r_[1, self.maparams])**-1
[docs] @cache_readonly def arfreq(self): r""" Returns the frequency of the AR roots. This is the solution, x, to z = abs(z)*exp(2j*np.pi*x) where z are the roots. """ z = self.arroots return np.arctan2(z.imag, z.real) / (2*pi)
[docs] @cache_readonly def mafreq(self): r""" Returns the frequency of the MA roots. This is the solution, x, to z = abs(z)*exp(2j*np.pi*x) where z are the roots. """ z = self.maroots return np.arctan2(z.imag, z.real) / (2*pi)
[docs] @cache_readonly def arparams(self): k = self.k_exog + self.k_trend return self.params[k:k+self.k_ar]
[docs] @cache_readonly def maparams(self): k = self.k_exog + self.k_trend k_ar = self.k_ar return self.params[k+k_ar:]
[docs] @cache_readonly def llf(self): return self.model.loglike(self.params)
[docs] @cache_readonly def bse(self): params = self.params hess = self.model.hessian(params) if len(params) == 1: # can't take an inverse, ensure 1d return np.sqrt(-1./hess[0]) return np.sqrt(np.diag(-inv(hess)))
[docs] def cov_params(self): # add scale argument? params = self.params hess = self.model.hessian(params) return -inv(hess)
[docs] @cache_readonly def aic(self): return -2 * self.llf + 2 * self._ic_df_model
[docs] @cache_readonly def bic(self): nobs = self.nobs return -2 * self.llf + np.log(nobs) * self._ic_df_model
[docs] @cache_readonly def hqic(self): nobs = self.nobs return -2 * self.llf + 2 * np.log(np.log(nobs)) * self._ic_df_model
[docs] @cache_readonly def fittedvalues(self): model = self.model endog = model.endog.copy() k_ar = self.k_ar exog = model.exog # this is a copy if exog is not None: if model.method == "css" and k_ar > 0: exog = exog[k_ar:] if model.method == "css" and k_ar > 0: endog = endog[k_ar:] fv = endog - self.resid # add deterministic part back in #k = self.k_exog + self.k_trend #TODO: this needs to be commented out for MLE with constant #if k != 0: # fv += dot(exog, self.params[:k]) return fv
[docs] @cache_readonly def resid(self): return self.model.geterrors(self.params)
[docs] @cache_readonly def pvalues(self): #TODO: same for conditional and unconditional? df_resid = self.df_resid return t.sf(np.abs(self.tvalues), df_resid) * 2
[docs] def predict(self, start=None, end=None, exog=None, dynamic=False): return self.model.predict(self.params, start, end, exog, dynamic)
predict.__doc__ = _arma_results_predict def _forecast_error(self, steps): sigma2 = self.sigma2 ma_rep = arma2ma(np.r_[1, -self.arparams], np.r_[1, self.maparams], lags=steps) fcasterr = np.sqrt(sigma2 * np.cumsum(ma_rep**2)) return fcasterr def _forecast_conf_int(self, forecast, fcasterr, alpha): const = norm.ppf(1 - alpha / 2.) conf_int = np.c_[forecast - const * fcasterr, forecast + const * fcasterr] return conf_int
[docs] def forecast(self, steps=1, exog=None, alpha=.05): """ Out-of-sample forecasts Parameters ---------- steps : int The number of out of sample forecasts from the end of the sample. exog : array If the model is an ARMAX, you must provide out of sample values for the exogenous variables. This should not include the constant. alpha : float The confidence intervals for the forecasts are (1 - alpha) % Returns ------- forecast : array Array of out of sample forecasts stderr : array Array of the standard error of the forecasts. conf_int : array 2d array of the confidence interval for the forecast """ if exog is not None: #TODO: make a convenience function for this. we're using the # pattern elsewhere in the codebase exog = np.asarray(exog) if self.k_exog == 1 and exog.ndim == 1: exog = exog[:, None] elif exog.ndim == 1: if len(exog) != self.k_exog: raise ValueError("1d exog given and len(exog) != k_exog") exog = exog[None, :] if exog.shape[0] != steps: raise ValueError("new exog needed for each step") if self.k_exog != exog.shape[1]: raise ValueError('exog must contain the same number of ' 'variables as in the estimated model.') # prepend in-sample exog observations if self.k_ar > 0: exog = np.vstack((self.model.exog[-self.k_ar:, self.k_trend:], exog)) else: if self.k_exog: raise ValueError('Forecast values for exog are required when ' 'the model contains exogenous regressors.') forecast = _arma_predict_out_of_sample(self.params, steps, self.resid, self.k_ar, self.k_ma, self.k_trend, self.k_exog, self.model.endog, exog, method=self.model.method) # compute the standard errors fcasterr = self._forecast_error(steps) conf_int = self._forecast_conf_int(forecast, fcasterr, alpha) return forecast, fcasterr, conf_int
[docs] def summary(self, alpha=.05): """Summarize the Model Parameters ---------- alpha : float, optional Significance level for the confidence intervals. Returns ------- smry : Summary instance This holds the summary table and text, which can be printed or converted to various output formats. See Also -------- statsmodels.iolib.summary.Summary """ from statsmodels.iolib.summary import Summary model = self.model title = model.__class__.__name__ + ' Model Results' method = model.method # get sample TODO: make better sample machinery for estimation k_diff = getattr(self, 'k_diff', 0) if 'mle' in method: start = k_diff else: start = k_diff + self.k_ar if self.data.dates is not None: dates = self.data.dates sample = [dates[start].strftime('%m-%d-%Y')] sample += ['- ' + dates[-1].strftime('%m-%d-%Y')] else: sample = str(start) + ' - ' + str(len(self.data.orig_endog)) k_ar, k_ma = self.k_ar, self.k_ma if not k_diff: order = str((k_ar, k_ma)) else: order = str((k_ar, k_diff, k_ma)) top_left = [('Dep. Variable:', None), ('Model:', [model.__class__.__name__ + order]), ('Method:', [method]), ('Date:', None), ('Time:', None), ('Sample:', [sample[0]]), ('', [sample[1]]) ] top_right = [ ('No. Observations:', [str(len(self.model.endog))]), ('Log Likelihood', ["%#5.3f" % self.llf]), ('S.D. of innovations', ["%#5.3f" % self.sigma2**.5]), ('AIC', ["%#5.3f" % self.aic]), ('BIC', ["%#5.3f" % self.bic]), ('HQIC', ["%#5.3f" % self.hqic])] smry = Summary() smry.add_table_2cols(self, gleft=top_left, gright=top_right, title=title) smry.add_table_params(self, alpha=alpha, use_t=False) # Make the roots table from statsmodels.iolib.table import SimpleTable if k_ma and k_ar: arstubs = ["AR.%d" % i for i in range(1, k_ar + 1)] mastubs = ["MA.%d" % i for i in range(1, k_ma + 1)] stubs = arstubs + mastubs roots = np.r_[self.arroots, self.maroots] freq = np.r_[self.arfreq, self.mafreq] elif k_ma: mastubs = ["MA.%d" % i for i in range(1, k_ma + 1)] stubs = mastubs roots = self.maroots freq = self.mafreq elif k_ar: arstubs = ["AR.%d" % i for i in range(1, k_ar + 1)] stubs = arstubs roots = self.arroots freq = self.arfreq else: # 0,0 model stubs = [] if len(stubs): # not 0, 0 modulus = np.abs(roots) data = np.column_stack((roots.real, roots.imag, modulus, freq)) roots_table = SimpleTable([('%17.4f' % row[0], '%+17.4fj' % row[1], '%17.4f' % row[2], '%17.4f' % row[3]) for row in data], headers=[' Real', ' Imaginary', ' Modulus', ' Frequency'], title="Roots", stubs=stubs) smry.tables.append(roots_table) return smry
[docs] def summary2(self, title=None, alpha=.05, float_format="%.4f"): """Experimental summary function for ARIMA Results Parameters ---------- title : string, optional Title for the top table. If not None, then this replaces the default title alpha : float significance level for the confidence intervals float_format: string print format for floats in parameters summary Returns ------- smry : Summary instance This holds the summary table and text, which can be printed or converted to various output formats. See Also -------- statsmodels.iolib.summary2.Summary : class to hold summary results """ from pandas import DataFrame # get sample TODO: make better sample machinery for estimation k_diff = getattr(self, 'k_diff', 0) if 'mle' in self.model.method: start = k_diff else: start = k_diff + self.k_ar if self.data.dates is not None: dates = self.data.dates sample = [dates[start].strftime('%m-%d-%Y')] sample += [dates[-1].strftime('%m-%d-%Y')] else: sample = str(start) + ' - ' + str(len(self.data.orig_endog)) k_ar, k_ma = self.k_ar, self.k_ma # Roots table if k_ma and k_ar: arstubs = ["AR.%d" % i for i in range(1, k_ar + 1)] mastubs = ["MA.%d" % i for i in range(1, k_ma + 1)] stubs = arstubs + mastubs roots = np.r_[self.arroots, self.maroots] freq = np.r_[self.arfreq, self.mafreq] elif k_ma: mastubs = ["MA.%d" % i for i in range(1, k_ma + 1)] stubs = mastubs roots = self.maroots freq = self.mafreq elif k_ar: arstubs = ["AR.%d" % i for i in range(1, k_ar + 1)] stubs = arstubs roots = self.arroots freq = self.arfreq else: # 0, 0 order stubs = [] if len(stubs): modulus = np.abs(roots) data = np.column_stack((roots.real, roots.imag, modulus, freq)) data = DataFrame(data) data.columns = ['Real', 'Imaginary', 'Modulus', 'Frequency'] data.index = stubs # Summary from statsmodels.iolib import summary2 smry = summary2.Summary() # Model info model_info = summary2.summary_model(self) model_info['Method:'] = self.model.method model_info['Sample:'] = sample[0] model_info[' '] = sample[-1] model_info['S.D. of innovations:'] = "%#5.3f" % self.sigma2**.5 model_info['HQIC:'] = "%#5.3f" % self.hqic model_info['No. Observations:'] = str(len(self.model.endog)) # Parameters params = summary2.summary_params(self) smry.add_dict(model_info) smry.add_df(params, float_format=float_format) if len(stubs): smry.add_df(data, float_format="%17.4f") smry.add_title(results=self, title=title) return smry
[docs] def plot_predict(self, start=None, end=None, exog=None, dynamic=False, alpha=.05, plot_insample=True, ax=None): from statsmodels.graphics.utils import _import_mpl, create_mpl_ax _ = _import_mpl() fig, ax = create_mpl_ax(ax) # use predict so you set dates forecast = self.predict(start, end, exog, dynamic) # doing this twice. just add a plot keyword to predict? start, end, out_of_sample, _ = ( self.model._get_prediction_index(start, end, dynamic=False)) if out_of_sample: steps = out_of_sample fc_error = self._forecast_error(steps) conf_int = self._forecast_conf_int(forecast[-steps:], fc_error, alpha) if hasattr(self.data, "predict_dates"): from pandas import Series forecast = Series(forecast, index=self.data.predict_dates) ax = forecast.plot(ax=ax, label='forecast') else: ax.plot(forecast) x = ax.get_lines()[-1].get_xdata() if out_of_sample: label = "{0:.0%} confidence interval".format(1 - alpha) ax.fill_between(x[-out_of_sample:], conf_int[:, 0], conf_int[:, 1], color='gray', alpha=.5, label=label) if plot_insample: ax.plot(x[:end + 1 - start], self.model.endog[start:end+1], label=self.model.endog_names) ax.legend(loc='best') return fig
plot_predict.__doc__ = _plot_predict
class ARMAResultsWrapper(wrap.ResultsWrapper): _attrs = {} _wrap_attrs = wrap.union_dicts(tsbase.TimeSeriesResultsWrapper._wrap_attrs, _attrs) _methods = {} _wrap_methods = wrap.union_dicts(tsbase.TimeSeriesResultsWrapper._wrap_methods, _methods) wrap.populate_wrapper(ARMAResultsWrapper, ARMAResults) # noqa:E305
[docs]class ARIMAResults(ARMAResults):
[docs] def predict(self, start=None, end=None, exog=None, typ='linear', dynamic=False): return self.model.predict(self.params, start, end, exog, typ, dynamic)
predict.__doc__ = _arima_results_predict def _forecast_error(self, steps): sigma2 = self.sigma2 ma_rep = arma2ma(np.r_[1, -self.arparams], np.r_[1, self.maparams], lags=steps) fcerr = np.sqrt(np.cumsum(cumsum_n(ma_rep, self.k_diff)**2)*sigma2) return fcerr def _forecast_conf_int(self, forecast, fcerr, alpha): const = norm.ppf(1 - alpha/2.) conf_int = np.c_[forecast - const*fcerr, forecast + const*fcerr] return conf_int
[docs] def forecast(self, steps=1, exog=None, alpha=.05): """ Out-of-sample forecasts Parameters ---------- steps : int The number of out of sample forecasts from the end of the sample. exog : array If the model is an ARIMAX, you must provide out of sample values for the exogenous variables. This should not include the constant. alpha : float The confidence intervals for the forecasts are (1 - alpha) % Returns ------- forecast : array Array of out of sample forecasts stderr : array Array of the standard error of the forecasts. conf_int : array 2d array of the confidence interval for the forecast Notes ----- Prediction is done in the levels of the original endogenous variable. If you would like prediction of differences in levels use `predict`. """ if exog is not None: if self.k_exog == 1 and exog.ndim == 1: exog = exog[:, None] if exog.shape[0] != steps: raise ValueError("new exog needed for each step") if self.k_exog != exog.shape[1]: raise ValueError('exog must contain the same number of ' 'variables as in the estimated model.') # prepend in-sample exog observations if self.k_ar > 0: exog = np.vstack((self.model.exog[-self.k_ar:, self.k_trend:], exog)) else: if self.k_exog: raise ValueError('Forecast values for exog are required when ' 'the model contains exogenous regressors.') forecast = _arma_predict_out_of_sample(self.params, steps, self.resid, self.k_ar, self.k_ma, self.k_trend, self.k_exog, self.model.endog, exog, method=self.model.method) d = self.k_diff endog = self.model.data.endog[-d:] forecast = unintegrate(forecast, unintegrate_levels(endog, d))[d:] # get forecast errors fcerr = self._forecast_error(steps) conf_int = self._forecast_conf_int(forecast, fcerr, alpha) return forecast, fcerr, conf_int
[docs] def plot_predict(self, start=None, end=None, exog=None, dynamic=False, alpha=.05, plot_insample=True, ax=None): from statsmodels.graphics.utils import _import_mpl, create_mpl_ax _ = _import_mpl() fig, ax = create_mpl_ax(ax) # use predict so you set dates forecast = self.predict(start, end, exog, 'levels', dynamic) # doing this twice. just add a plot keyword to predict? start, end, out_of_sample, _ = ( self.model._get_prediction_index(start, end, dynamic)) if out_of_sample: steps = out_of_sample fc_error = self._forecast_error(steps) conf_int = self._forecast_conf_int(forecast[-steps:], fc_error, alpha) if hasattr(self.data, "predict_dates"): from pandas import Series forecast = Series(forecast, index=self.data.predict_dates) ax = forecast.plot(ax=ax, label='forecast') else: ax.plot(forecast) x = ax.get_lines()[-1].get_xdata() if out_of_sample: label = "{0:.0%} confidence interval".format(1 - alpha) ax.fill_between(x[-out_of_sample:], conf_int[:, 0], conf_int[:, 1], color='gray', alpha=.5, label=label) if plot_insample: import re k_diff = self.k_diff label = re.sub(r"D\d*\.", "", self.model.endog_names) levels = unintegrate(self.model.endog, self.model._first_unintegrate) ax.plot(x[:end + 1 - start], levels[start + k_diff:end + k_diff + 1], label=label) ax.legend(loc='best') return fig
plot_predict.__doc__ = _arima_plot_predict
class ARIMAResultsWrapper(ARMAResultsWrapper): pass wrap.populate_wrapper(ARIMAResultsWrapper, ARIMAResults) # noqa:E305 if __name__ == "__main__": import statsmodels.api as sm # simulate arma process from statsmodels.tsa.arima_process import arma_generate_sample y = arma_generate_sample([1., -.75], [1., .25], nsample=1000) arma = ARMA(y) res = arma.fit(trend='nc', order=(1, 1)) np.random.seed(12345) y_arma22 = arma_generate_sample([1., -.85, .35], [1, .25, -.9], nsample=1000) arma22 = ARMA(y_arma22) res22 = arma22.fit(trend='nc', order=(2, 2)) # test CSS arma22_css = ARMA(y_arma22) res22css = arma22_css.fit(trend='nc', order=(2, 2), method='css') data = sm.datasets.sunspots.load(as_pandas=False) ar = ARMA(data.endog) resar = ar.fit(trend='nc', order=(9, 0)) y_arma31 = arma_generate_sample([1, -.75, -.35, .25], [.1], nsample=1000) arma31css = ARMA(y_arma31) res31css = arma31css.fit(order=(3, 1), method="css", trend="nc", transparams=True) y_arma13 = arma_generate_sample([1., -.75], [1, .25, -.5, .8], nsample=1000) arma13css = ARMA(y_arma13) res13css = arma13css.fit(order=(1, 3), method='css', trend='nc') # check css for p < q and q < p y_arma41 = arma_generate_sample([1., -.75, .35, .25, -.3], [1, -.35], nsample=1000) arma41css = ARMA(y_arma41) res41css = arma41css.fit(order=(4, 1), trend='nc', method='css') y_arma14 = arma_generate_sample([1, -.25], [1., -.75, .35, .25, -.3], nsample=1000) arma14css = ARMA(y_arma14) res14css = arma14css.fit(order=(4, 1), trend='nc', method='css') # ARIMA Model from statsmodels.datasets import webuse dta = webuse('wpi1') wpi = dta['wpi'] mod = ARIMA(wpi, (1, 1, 1)).fit()