Forked from yusuke0519/central_mean_diescrepancy.py
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November 23, 2022 06:53
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PyTorch implementation of central mean discrepancy (https://arxiv.org/abs/1702.08811)
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# # -*- coding: utf-8 -*- | |
import itertools | |
from torch.utils import data | |
def l2diff(x1, x2): | |
""" | |
standard euclidean norm | |
""" | |
return ((x1-x2)**2).sum().sqrt() | |
def moment_diff(sx1, sx2, k): | |
""" | |
difference between moments | |
""" | |
ss1 = (sx1**k).mean(0) | |
ss2 = (sx2**k).mean(0) | |
return l2diff(ss1, ss2) | |
class CMD(object): | |
def __init__(self, n_moments=5): | |
self.n_moments = n_moments | |
def __call__(self, x1, x2): | |
mx1 = x1.mean(dim=0) | |
mx2 = x2.mean(dim=0) | |
sx1 = x1 - mx1 | |
sx2 = x2 - mx2 | |
dm = l2diff(mx1, mx2) | |
scms = dm | |
for i in range(self.n_moments-1): | |
# moment diff of centralized samples | |
scms += moment_diff(sx1, sx2, i+2) | |
return scms |
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