IRSep 1, 2021

Memory Augmented Multi-Instance Contrastive Predictive Coding for Sequential Recommendation

arXiv:2109.00368v368 citations
Originality Incremental advance
AI Analysis

This work addresses sequential recommendation for users by improving accuracy through a novel contrastive learning approach, though it appears incremental as it builds on existing contrastive predictive coding methods.

The paper tackles the challenges of capturing long-term preferences and sparse supervision in sequential recommendation by proposing MMInfoRec, a memory-augmented multi-instance contrastive predictive coding framework, which outperforms state-of-the-art baselines on four benchmark datasets.

The sequential recommendation aims to recommend items, such as products, songs and places, to users based on the sequential patterns of their historical records. Most existing sequential recommender models consider the next item prediction task as the training signal. Unfortunately, there are two essential challenges for these methods: (1) the long-term preference is difficult to capture, and (2) the supervision signal is too sparse to effectively train a model. In this paper, we propose a novel sequential recommendation framework to overcome these challenges based on a memory augmented multi-instance contrastive predictive coding scheme, denoted as MMInfoRec. The basic contrastive predictive coding (CPC) serves as encoders of sequences and items. The memory module is designed to augment the auto-regressive prediction in CPC to enable a flexible and general representation of the encoded preference, which can improve the ability to capture the long-term preference. For effective training of the MMInfoRec model, a novel multi-instance noise contrastive estimation (MINCE) loss is proposed, using multiple positive samples, which offers effective exploitation of samples inside a mini-batch. The proposed MMInfoRec framework falls into the contrastive learning style, within which, however, a further finetuning step is not required given that its contrastive training task is well aligned with the target recommendation task. With extensive experiments on four benchmark datasets, MMInfoRec can outperform the state-of-the-art baselines.

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