ICML2024
High-Order Contrastive Learning with Fine-grained Comparative Levels for Sparse Ordinal Tensor Completion
Yu Dai, Junchen Shen, Zijie Zhai, Danlin Liu, Jingyang Chen, Yu Sun, Ping Li, Jie Zhang, Kai Zhang
Abstract
Contrastive learning is a powerful paradigm for representation learning with wide applications in vision and NLP, but how to extend its success to high-dimensional tensors remains a challenge. This is because tensor data often exhibit high-order mode-interactions that are hard to profile and with negative samples growing combinatorially fast; besides, many real-world tensors have ordinal entries that necessitate more delicate comparative levels. We propose High-Order Contrastive Tensor Completion (HOCTC) to extend contrastive learning to sparse ordinal tensor regression. HOCTC employs a novel attentionbased strategy with query-expansion to capture high-order mode interactions even in case of very limited tokens, which transcends beyond secondorder learning scenarios. Besides, it extends twolevel comparisons (positive-vs-negative) to finegrained contrast-levels using ordinal tensor entries as a natural guidance. Efficient sampling scheme is proposed to enforce such delicate comparative structures, generating comprehensive selfsupervised signals for high-order representation learning. Experiments show that HOCTC has promising results in sparse tensor completion in traffic/recommender applications.