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Python implementation of smoothed z-score algorithm version 2, from http://stackoverflow.com/a/22640362/6029703
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from numba.decorators import jit | |
import numpy as np | |
#The original version is here: https://gist.github.com/ximeg/587011a65d05f067a29ce9c22894d1d2 | |
#I made small changes and used numba to do it faster. | |
@jit | |
def thresholding_algo2(y, lag, threshold, influence): | |
signals = np.zeros(len(y)) | |
filteredY = np.array(y) | |
avgFilter = np.zeros(len(y)) | |
stdFilter = np.zeros(len(y)) | |
avgFilter[lag - 1] = np.mean(y[0:lag]) | |
stdFilter[lag - 1] = np.std(y[0:lag]) | |
for i in range(lag, len(y) - 1): | |
if abs(y[i] - avgFilter[i-1]) > threshold * stdFilter [i-1]: | |
if y[i] > avgFilter[i-1]: | |
signals[i] = 1 | |
else: | |
signals[i] = -1 | |
filteredY[i] = influence * y[i] + (1 - influence) * filteredY[i-1] | |
avgFilter[i] = np.mean(filteredY[(i-lag):i]) | |
stdFilter[i] = np.std(filteredY[(i-lag):i]) | |
else: | |
signals[i] = 0 | |
filteredY[i] = y[i] | |
avgFilter[i] = np.mean(filteredY[(i-lag):i]) | |
stdFilter[i] = np.std(filteredY[(i-lag):i]) | |
return dict(signals = np.asarray(signals), | |
avgFilter = np.asarray(avgFilter), | |
stdFilter = np.asarray(stdFilter)) |
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