Towards Mitigating Dimensional Collapse of Representations in Collaborative Filtering
Huiyuan Chen,
Vivian Lai,
Hongye Jin
et al.
Abstract:Contrastive Learning (CL) has shown promising performance in collaborative filtering. The key idea is to generate augmentationinvariant embeddings by maximizing the Mutual Information between different augmented views of the same instance. However, we empirically observe that existing CL models suffer from the dimensional collapse issue, where user/item embeddings only span a low-dimension subspace of the entire feature space. This suppresses other dimensional information and weakens the distinguishability of … Show more
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