cs.AI updates on arXiv.org 07月29日 12:22
Retrieval and Distill: A Temporal Data Shift-Free Paradigm for Online Recommendation System
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本文提出时序不变性定理,设计基于检索的推荐系统框架,通过利用时序数据提升推荐系统性能,并设计蒸馏框架降低在线部署成本。

arXiv:2404.15678v5 Announce Type: replace-cross Abstract: Current recommendation systems are significantly affected by a serious issue of temporal data shift, which is the inconsistency between the distribution of historical data and that of online data. Most existing models focus on utilizing updated data, overlooking the transferable, temporal data shift-free information that can be learned from shifting data. We propose the Temporal Invariance of Association theorem, which suggests that given a fixed search space, the relationship between the data and the data in the search space keeps invariant over time. Leveraging this principle, we designed a retrieval-based recommendation system framework that can train a data shift-free relevance network using shifting data, significantly enhancing the predictive performance of the original model in the recommendation system. However, retrieval-based recommendation models face substantial inference time costs when deployed online. To address this, we further designed a distill framework that can distill information from the relevance network into a parameterized module using shifting data. The distilled model can be deployed online alongside the original model, with only a minimal increase in inference time. Extensive experiments on multiple real datasets demonstrate that our framework significantly improves the performance of the original model by utilizing shifting data.

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推荐系统 时序数据 时序不变性定理 蒸馏框架 数据迁移
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