pmdarima.utils
.acf¶
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pmdarima.utils.
acf
(x, unbiased=False, nlags=40, qstat=False, fft=False, alpha=None, missing='none')[source][source]¶ Calculate the autocorrelation function.
Parameters: x : array_like
The time series data.
unbiased : bool
If True, then denominators for autocovariance are n-k, otherwise n.
nlags : int, optional
Number of lags to return autocorrelation for.
qstat : bool, optional
If True, returns the Ljung-Box q statistic for each autocorrelation coefficient. See q_stat for more information.
fft : bool, optional
If True, computes the ACF via FFT.
alpha : scalar, optional
If a number is given, the confidence intervals for the given level are returned. For instance if alpha=.05, 95 % confidence intervals are returned where the standard deviation is computed according to Bartlett’s formula.
missing : str, optional
A string in [‘none’, ‘raise’, ‘conservative’, ‘drop’] specifying how the NaNs are to be treated.
Returns: acf : ndarray
The autocorrelation function.
confint : ndarray, optional
Confidence intervals for the ACF. Returned if alpha is not None.
qstat : ndarray, optional
The Ljung-Box Q-Statistic. Returned if q_stat is True.
pvalues : ndarray, optional
The p-values associated with the Q-statistics. Returned if q_stat is True.
Notes
The acf at lag 0 (ie., 1) is returned.
For very long time series it is recommended to use fft convolution instead. When fft is False uses a simple, direct estimator of the autocovariances that only computes the first nlag + 1 values. This can be much faster when the time series is long and only a small number of autocovariances are needed.
If unbiased is true, the denominator for the autocovariance is adjusted but the autocorrelation is not an unbiased estimator.
References
[R91] Parzen, E., 1963. On spectral analysis with missing observations and amplitude modulation. Sankhya: The Indian Journal of Statistics, Series A, pp.383-392.