Comments (2)
Hello @tonysy , sorry for the late reply! In Eq(9), basically it is positive the distance to corresponding centroids, and negative the distance to other centroids. The only difference is that we not only calculate the distance to centroids but also calculate dot product to centroids for repelling loss. Because we did normalization to the final feature, dot product is just the cosine similarity, another distance metric. We did not specify this in the paper. We will update the paper accordingly. Thanks again.
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It has been 26 days since last comment. I will close this issue now. If you have any more questions, please reopen this issue. Thanks.
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Related Issues (20)
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