.. module:: statsmodels.tsa :synopsis: Time-series analysis .. currentmodule:: statsmodels.tsa .. _tsa: Time Series analysis :mod:`tsa` =============================== :mod:`statsmodels.tsa` contains model classes and functions that are useful for time series analysis. Basic models include univariate autoregressive models (AR), vector autoregressive models (VAR) and univariate autoregressive moving average models (ARMA). Non-linear models include Markov switching dynamic regression and autoregression. It also includes descriptive statistics for time series, for example autocorrelation, partial autocorrelation function and periodogram, as well as the corresponding theoretical properties of ARMA or related processes. It also includes methods to work with autoregressive and moving average lag-polynomials. Additionally, related statistical tests and some useful helper functions are available. Estimation is either done by exact or conditional Maximum Likelihood or conditional least-squares, either using Kalman Filter or direct filters. Currently, functions and classes have to be imported from the corresponding module, but the main classes will be made available in the statsmodels.tsa namespace. The module structure is within statsmodels.tsa is - stattools : empirical properties and tests, acf, pacf, granger-causality, adf unit root test, kpss test, bds test, ljung-box test and others. - ar_model : univariate autoregressive process, estimation with conditional and exact maximum likelihood and conditional least-squares - arima.model : univariate ARIMA process, estimation with alternative methods - statespace : Comprehensive statespace model specification and estimation. See the :ref:`statespace documentation `. - vector_ar, var : vector autoregressive process (VAR) and vector error correction models, estimation, impulse response analysis, forecast error variance decompositions, and data visualization tools. See the :ref:`vector_ar documentation `. - arma_process : properties of arma processes with given parameters, this includes tools to convert between ARMA, MA and AR representation as well as acf, pacf, spectral density, impulse response function and similar - sandbox.tsa.fftarma : similar to arma_process but working in frequency domain - tsatools : additional helper functions, to create arrays of lagged variables, construct regressors for trend, detrend and similar. - filters : helper function for filtering time series - regime_switching : Markov switching dynamic regression and autoregression models Some additional functions that are also useful for time series analysis are in other parts of statsmodels, for example additional statistical tests. Some related functions are also available in matplotlib, nitime, and scikits.talkbox. Those functions are designed more for the use in signal processing where longer time series are available and work more often in the frequency domain. .. currentmodule:: statsmodels.tsa Descriptive Statistics and Tests """""""""""""""""""""""""""""""" .. autosummary:: :toctree: generated/ stattools.acovf stattools.acf stattools.pacf stattools.pacf_yw stattools.pacf_ols stattools.pacf_burg stattools.ccovf stattools.ccf stattools.adfuller stattools.kpss stattools.range_unit_root_test stattools.zivot_andrews stattools.coint stattools.bds stattools.q_stat stattools.breakvar_heteroskedasticity_test stattools.grangercausalitytests stattools.levinson_durbin stattools.innovations_algo stattools.innovations_filter stattools.levinson_durbin_pacf stattools.arma_order_select_ic x13.x13_arima_select_order x13.x13_arima_analysis Estimation """""""""" The following are the main estimation classes, which can be accessed through statsmodels.tsa.api and their result classes Univariate Autoregressive Processes (AR) ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ The basic autoregressive model in Statsmodels is: .. currentmodule:: statsmodels.tsa .. autosummary:: :toctree: generated/ ar_model.AutoReg ar_model.AutoRegResults ar_model.ar_select_order The `ar_model.AutoReg` model estimates parameters using conditional MLE (OLS), and supports exogenous regressors (an AR-X model) and seasonal effects. AR-X and related models can also be fitted with the `arima.ARIMA` class and the `SARIMAX` class (using full MLE via the Kalman Filter). See the notebook `Autoregressions `_ for an overview. Autoregressive Moving-Average Processes (ARMA) and Kalman Filter ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ Basic ARIMA model and results classes are as follows: .. currentmodule:: statsmodels.tsa .. autosummary:: :toctree: generated/ arima.model.ARIMA arima.model.ARIMAResults This model allows estimating parameters by various methods (including conditional MLE via the Hannan-Rissanen method and full MLE via the Kalman filter). It is a special case of the `SARIMAX` model, and it includes a large number of inherited features from the :ref:`state space ` models (including prediction / forecasting, residual diagnostics, simulation and impulse responses, etc.). See the notebooks `ARMA: Sunspots Data `_ and `ARMA: Artificial Data `_ for an overview. Exponential Smoothing ~~~~~~~~~~~~~~~~~~~~~ Linear and non-linear exponential smoothing models are available: .. currentmodule:: statsmodels.tsa.holtwinters .. autosummary:: :toctree: generated/ ExponentialSmoothing SimpleExpSmoothing Holt HoltWintersResults Separately, linear and non-linear exponential smoothing models have also been implemented based on the "innovations" state space approach. In addition to the usual support for parameter fitting, in-sample prediction, and out-of-sample forecasting, these models also support prediction intervals, simulation, and more. .. currentmodule:: statsmodels.tsa .. autosummary:: :toctree: generated/ exponential_smoothing.ets.ETSModel exponential_smoothing.ets.ETSResults Finally, linear exponential smoothing models have also been separately implemented as a special case of the general state space framework (this is separate from the "innovations" state space approach described above). Although this approach does not allow for the non-linear (multiplicative) exponential smoothing models, it includes all features of :ref:`state space ` models (including prediction / forecasting, residual diagnostics, simulation and impulse responses, etc.). .. currentmodule:: statsmodels.tsa .. autosummary:: :toctree: generated/ statespace.exponential_smoothing.ExponentialSmoothing statespace.exponential_smoothing.ExponentialSmoothingResults See the notebook `Exponential Smoothing `_ for an overview. ARMA Process """""""""""" The following are tools to work with the theoretical properties of an ARMA process for given lag-polynomials. .. autosummary:: :toctree: generated/ arima_process.ArmaProcess arima_process.ar2arma arima_process.arma2ar arima_process.arma2ma arima_process.arma_acf arima_process.arma_acovf arima_process.arma_generate_sample arima_process.arma_impulse_response arima_process.arma_pacf arima_process.arma_periodogram arima_process.deconvolve arima_process.index2lpol arima_process.lpol2index arima_process.lpol_fiar arima_process.lpol_fima arima_process.lpol_sdiff .. currentmodule:: statsmodels.sandbox.tsa.fftarma .. autosummary:: :toctree: generated/ ArmaFft .. currentmodule:: statsmodels.tsa Autoregressive Distributed Lag (ARDL) Models """""""""""""""""""""""""""""""""""""""""""" Autoregressive Distributed Lag models span the space between autoregressive models (:class:`~statsmodels.tsa.ar_model.AutoReg`) and vector autoregressive models (:class:`~statsmodels.tsa.vector_ar.VAR`). .. currentmodule:: statsmodels.tsa .. autosummary:: :toctree: generated/ ardl.ARDL ardl.ARDLResults ardl.ardl_select_order ardl.ARDLOrderSelectionResults The `ardl.ARDL` model estimates parameters using conditional MLE (OLS) and allows for both simple deterministic terms (trends and seasonal dummies) as well as complex deterministics using a :class:`~statsmodels.tsa.deterministic.DeterministicProcess`. AR-X and related models can also be fitted with :class:`~statsmodels.tsa.statespace.sarimax.SARIMAX` class (using full MLE via the Kalman Filter). See the notebook `Autoregressive Distributed Lag Models `_ for an overview. Error Correction Models (ECM) """"""""""""""""""""""""""""" Error correction models are reparameterizations of ARDL models that regress the difference of the endogenous variable on the lagged levels of the endogenous variables and optional lagged differences of the exogenous variables. .. currentmodule:: statsmodels.tsa .. autosummary:: :toctree: generated/ ardl.UECM ardl.UECMResults ardl.BoundsTestResult Statespace Models """"""""""""""""" See the :ref:`statespace documentation `. Vector ARs and Vector Error Correction Models """"""""""""""""""""""""""""""""""""""""""""" See the :ref:`vector_ar documentation. ` Regime switching models """"""""""""""""""""""" .. currentmodule:: statsmodels.tsa.regime_switching.markov_regression .. autosummary:: :toctree: generated/ MarkovRegression .. currentmodule:: statsmodels.tsa.regime_switching.markov_autoregression .. autosummary:: :toctree: generated/ MarkovAutoregression See the notebooks `Markov switching dynamic regression `_ and `Markov switching autoregression `_ for an overview. Time Series Filters """"""""""""""""""" .. currentmodule:: statsmodels.tsa.filters.bk_filter .. autosummary:: :toctree: generated/ bkfilter .. currentmodule:: statsmodels.tsa.filters.hp_filter .. autosummary:: :toctree: generated/ hpfilter .. currentmodule:: statsmodels.tsa.filters.cf_filter .. autosummary:: :toctree: generated/ cffilter .. currentmodule:: statsmodels.tsa.filters.filtertools .. autosummary:: :toctree: generated/ convolution_filter recursive_filter miso_lfilter fftconvolve3 fftconvolveinv .. currentmodule:: statsmodels.tsa.seasonal .. autosummary:: :toctree: generated/ seasonal_decompose STL MSTL DecomposeResult See the notebook `Time Series Filters `_ for an overview. TSA Tools """"""""" .. currentmodule:: statsmodels.tsa.tsatools .. autosummary:: :toctree: generated/ add_lag add_trend detrend lagmat lagmat2ds VARMA Process """"""""""""" .. currentmodule:: statsmodels.tsa.varma_process .. autosummary:: :toctree: generated/ VarmaPoly Interpolation """"""""""""" .. currentmodule:: statsmodels.tsa.interp.denton .. autosummary:: :toctree: generated/ dentonm Deterministic Processes """"""""""""""""""""""" Deterministic processes simplify creating deterministic sequences with time trend or seasonal patterns. They also provide methods to simplify generating deterministic terms for out-of-sample forecasting. A :class:`~statsmodels.tsa.deterministic.DeterministicProcess` can be directly used with :class:`~statsmodels.tsa.ar_model.AutoReg` to construct complex deterministic dynamics and to forecast without constructing exogenous trends. .. currentmodule:: statsmodels.tsa.deterministic .. autosummary:: :toctree: generated/ DeterministicProcess TimeTrend Seasonality Fourier CalendarTimeTrend CalendarSeasonality CalendarFourier DeterministicTerm CalendarDeterministicTerm FourierDeterministicTerm TimeTrendDeterministicTerm Users who wish to write custom deterministic terms must use subclass :class:`~statsmodels.tsa.deterministic.DeterministicTerm`. See the notebook `Deterministic Terms in Time Series Models `_ for an overview. Forecasting Models """""""""""""""""" .. module:: statsmodels.tsa.forecasting :synopsis: Models designed for forecasting .. currentmodule:: statsmodels.tsa.forecasting The Theta Model ~~~~~~~~~~~~~~~ The Theta model is a simple forecasting method that combines a linear time trend with a Simple Exponential Smoother (Assimakopoulos & Nikolopoulos). An estimator for the parameters of the Theta model and methods to forecast are available in: .. module:: statsmodels.tsa.forecasting.theta :synopsis: Models designed for forecasting .. currentmodule:: statsmodels.tsa.forecasting.theta .. autosummary:: :toctree: generated/ ThetaModel ThetaModelResults Forecasting after STL Decomposition ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ :class:`statsmodels.tsa.seasonal.STL` is commonly used to remove seasonal components from a time series. The deseasonalized time series can then be modeled using a any non-seasonal model, and forecasts are constructed by adding the forecast from the non-seasonal model to the estimates of the seasonal component from the final full-cycle which are forecast using a random-walk model. .. module:: statsmodels.tsa.forecasting.stl :synopsis: Models designed for forecasting .. currentmodule:: statsmodels.tsa.forecasting.stl .. autosummary:: :toctree: generated/ STLForecast STLForecastResults See the notebook `Seasonal Decomposition `_ for an overview. Prediction Results """""""""""""""""" Most forecasting methods support a ``get_prediction`` method that return a ``PredictionResults`` object that contains both the prediction, its variance and can construct a prediction interval. Results Class ~~~~~~~~~~~~~ .. module:: statsmodels.tsa.base.prediction :synopsis: Shared objects for predictive methods .. currentmodule:: statsmodels.tsa.base.prediction .. autosummary:: :toctree: generated/ PredictionResults