statsmodels.tsa.stattools.grangercausalitytests
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statsmodels.tsa.stattools.grangercausalitytests(x, maxlag, addconst=True, verbose=True)
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four tests for granger non causality of 2 timeseries
all four tests give similar results
params_ftest
andssr_ftest
are equivalent based on F test which is identical to lmtest:grangertest in RParameters: x : array, 2d, (nobs,2)
data for test whether the time series in the second column Granger causes the time series in the first column
maxlag : integer
the Granger causality test results are calculated for all lags up to maxlag
verbose : bool
print results if true
Returns: results : dictionary
all test results, dictionary keys are the number of lags. For each lag the values are a tuple, with the first element a dictionary with teststatistic, pvalues, degrees of freedom, the second element are the OLS estimation results for the restricted model, the unrestricted model and the restriction (contrast) matrix for the parameter f_test.
Notes
TODO: convert to class and attach results properly
The Null hypothesis for grangercausalitytests is that the time series in the second column, x2, does NOT Granger cause the time series in the first column, x1. Grange causality means that past values of x2 have a statistically significant effect on the current value of x1, taking past values of x1 into account as regressors. We reject the null hypothesis that x2 does not Granger cause x1 if the pvalues are below a desired size of the test.
The null hypothesis for all four test is that the coefficients corresponding to past values of the second time series are zero.
?params_ftest?, ?ssr_ftest? are based on F distribution
?ssr_chi2test?, ?lrtest? are based on chi-square distribution
References
http://en.wikipedia.org/wiki/Granger_causality Greene: Econometric Analysis
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