statsmodels.regression.recursive_ls.RecursiveLSResults.cusum_squares

RecursiveLSResults.cusum_squares()[source]

Cumulative sum of squares of standardized recursive residuals statistics

Returns:

cusum_squares : array_like

An array of length nobs - k_exog holding the CUSUM of squares statistics.

Notes

The CUSUM of squares statistic takes the form:

s_t = \left ( \sum_{j=k+1}^t w_j^2 \right ) \Bigg /
      \left ( \sum_{j=k+1}^T w_j^2 \right )

where w_j is the recursive residual at time j.

Excludes the first k_exog datapoints.

References

[R44]Brown, R. L., J. Durbin, and J. M. Evans. 1975. “Techniques for Testing the Constancy of Regression Relationships over Time.” Journal of the Royal Statistical Society. Series B (Methodological) 37 (2): 149-92.