|  View source on GitHub | 
Auto correlation along one axis.
tfp.stats.auto_correlation(
    x,
    axis=-1,
    max_lags=None,
    center=True,
    normalize=True,
    name='auto_correlation'
)
Given a 1-D wide sense stationary (WSS) sequence X, the auto correlation
RXX may be defined as  (with E expectation and Conj complex conjugate)
RXX[m] := E{ W[m] Conj(W[0]) } = E{ W[0] Conj(W[-m]) },
W[n]   := (X[n] - MU) / S,
MU     := E{ X[0] },
S**2   := E{ (X[0] - MU) Conj(X[0] - MU) }.
This function takes the viewpoint that x is (along one axis) a finite
sub-sequence of a realization of (WSS) X, and then uses x to produce an
estimate of RXX[m] as follows:
After extending x from length L to inf by zero padding, the auto
correlation estimate rxx[m] is computed for m = 0, 1, ..., max_lags as
rxx[m] := (L - m)**-1 sum_n w[n + m] Conj(w[n]),
w[n]   := (x[n] - mu) / s,
mu     := L**-1 sum_n x[n],
s**2   := L**-1 sum_n (x[n] - mu) Conj(x[n] - mu)
The error in this estimate is proportional to 1 / sqrt(len(x) - m), so users
often set max_lags small enough so that the entire output is meaningful.
Note that since mu is an imperfect estimate of E{ X[0] }, and we divide by
len(x) - m rather than len(x) - m - 1, our estimate of auto correlation
contains a slight bias, which goes to zero as len(x) - m --> infinity.
| Returns | |
|---|---|
| rxx:Tensorof samedtypeasx.rxx.shape[i] = x.shape[i]fori != axis, andrxx.shape[axis] = max_lags + 1. | 
| Raises | |
|---|---|
| TypeError | If xis not a supported type. |