# Specify lag in numpy.correlate

Matlab's cross-correlation function `xcorr(x,y,maxlags)` has an option `maxlag`, which returns the cross-correlation sequence over the lag range `[-maxlags:maxlags]`. Numpy's `numpy.correlate(N,M,mode)` has three modes, but none of them allow me to set a specific lag, which is different from full `(N+M-1)`, same `(max(M, N))` or valid `(max(M, N) - min(M, N) + 1 )`. For `len(N) = 60000`, `len (M) = 200`, I want to set the lag as 100.

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So you're asking for a function like correlate that takes a variable lag parameter? –  macduff Feb 21 '12 at 17:34
Yes, precisely. –  Jyotika Feb 21 '12 at 17:37

I would recommend looking at this file to determine how you would want to implement the correlation described here.

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This is my implementation of the lead-lag correlation, but it is limited to be 1-D and not guaranteed to be the best in terms of efficient. It uses the scipy.stats.pearsonr to the do the core computation, so also returned is the p value for the coefficient. Please modify to optimize based on this straw man.

``````def lagcorr(x,y,lag=None,verbose=True):
'''Compute lead-lag correlations between 2 time series.

<x>,<y>: 1-D time series.
<lag>: lag option, could take different forms of <lag>:
if 0 or None, compute ordinary correlation and p-value;
if positive integer, compute lagged correlation with lag
upto <lag>;
upto <-lag>;
if pass in an list or tuple or array of integers, compute

Therefore positive lag means <x> lags <y> by <lag>, computation is
done by shifting <x> to the left hand side by <lag> with respect to
<y>.
Similarly negative lag means <x> leads <y> by <lag>, computation is
done by shifting <x> to the right hand side by <lag> with respect to
<y>.

Return <result>: a (n*2) array, with 1st column the correlation
coefficients, 2nd column correpsonding p values.

Currently only works for 1-D arrays.
'''

import numpy
from scipy.stats import pearsonr

if len(x)!=len(y):
raise('Input variables of different lengths.')

#--------Unify types of <lag>-------------
if numpy.isscalar(lag):
if abs(lag)>=len(x):
raise('Maximum lag equal or larger than array.')
if lag<0:
lag=-numpy.arange(abs(lag)+1)
elif lag==0:
lag=[0,]
else:
lag=numpy.arange(lag+1)
elif lag is None:
lag=[0,]
else:
lag=numpy.asarray(lag)

#-------Loop over lags---------------------
result=[]
if verbose:
print '\n#<lagcorr>: Computing lagged-correlations at lags:',lag

for ii in lag:
if ii<0:
result.append(pearsonr(x[:ii],y[-ii:]))
elif ii==0:
result.append(pearsonr(x,y))
elif ii>0:
result.append(pearsonr(x[ii:],y[:-ii]))

result=numpy.asarray(result)

return result
``````
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