Adaptive Utilization of Cross-scenario Information for Multi-scenario Recommendation
- URL: http://arxiv.org/abs/2407.19727v1
- Date: Mon, 29 Jul 2024 06:17:33 GMT
- Title: Adaptive Utilization of Cross-scenario Information for Multi-scenario Recommendation
- Authors: Xiufeng Shu, Ruidong Han, Xiang Li, Wei Lin,
- Abstract summary: Multi-scenario Recommendation (MSR) is an important topic that improves ranking performance by leveraging information from different scenarios.
Recent methods for MSR mostly construct scenario shared or specific modules to model commonalities and differences among scenarios.
We propose a unified model named Cross-Scenario Information Interaction (CSII) to serve all scenarios by a mixture of scenario-dominated experts.
- Score: 11.489766641148151
- License:
- Abstract: Recommender system of the e-commerce platform usually serves multiple business scenarios. Multi-scenario Recommendation (MSR) is an important topic that improves ranking performance by leveraging information from different scenarios. Recent methods for MSR mostly construct scenario shared or specific modules to model commonalities and differences among scenarios. However, when the amount of data among scenarios is skewed or data in some scenarios is extremely sparse, it is difficult to learn scenario-specific parameters well. Besides, simple sharing of information from other scenarios may result in a negative transfer. In this paper, we propose a unified model named Cross-Scenario Information Interaction (CSII) to serve all scenarios by a mixture of scenario-dominated experts. Specifically, we propose a novel method to select highly transferable features in data instances. Then, we propose an attention-based aggregator module, which can adaptively extract relative knowledge from cross-scenario. Experiments on the production dataset verify the superiority of our method. Online A/B test in Meituan Waimai APP also shows a significant performance gain, leading to an average improvement in GMV (Gross Merchandise Value) of 1.0% for overall scenarios.
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