Pre-trained Recommender Systems: A Causal Debiasing Perspective
Ziqian Lin, Hao Ding, Nghia Trong Hoang, Branislav Kveton, Anoop, Deoras, Hao Wang

TL;DR
This paper explores pre-trained recommender systems and introduces a causal debiasing approach to improve few-shot learning across diverse domains, addressing biases inherent in heterogeneous data.
Contribution
It proposes a hierarchical Bayesian deep learning model, PreRec, for causal debiasing in pre-trained recommender systems, enhancing cross-domain adaptation.
Findings
Significant improvement in zero- and few-shot recommendation performance
Effective mitigation of cross-domain biases
Demonstrated robustness across multiple real-world datasets
Abstract
Recent studies on pre-trained vision/language models have demonstrated the practical benefit of a new, promising solution-building paradigm in AI where models can be pre-trained on broad data describing a generic task space and then adapted successfully to solve a wide range of downstream tasks, even when training data is severely limited (e.g., in zero- or few-shot learning scenarios). Inspired by such progress, we investigate in this paper the possibilities and challenges of adapting such a paradigm to the context of recommender systems, which is less investigated from the perspective of pre-trained model. In particular, we propose to develop a generic recommender that captures universal interaction patterns by training on generic user-item interaction data extracted from different domains, which can then be fast adapted to improve few-shot learning performance in unseen new domains…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Domain Adaptation and Few-Shot Learning · Recommender Systems and Techniques
