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Autori principali: Jin, Jipeng, Zhang, Zhaoxiang, Li, Zhiheng, Gao, Xiaofeng, Yang, Xiongwen, Xiao, Lei, Jiang, Jie
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2312.16868
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author Jin, Jipeng
Zhang, Zhaoxiang
Li, Zhiheng
Gao, Xiaofeng
Yang, Xiongwen
Xiao, Lei
Jiang, Jie
author_facet Jin, Jipeng
Zhang, Zhaoxiang
Li, Zhiheng
Gao, Xiaofeng
Yang, Xiongwen
Xiao, Lei
Jiang, Jie
contents Recommender systems with cascading architecture play an increasingly significant role in online recommendation platforms, where the approach to dealing with negative feedback is a vital issue. For instance, in short video platforms, users tend to quickly slip away from candidates that they feel aversive, and recommender systems are expected to receive these explicit negative feedbacks and make adjustments to avoid these recommendations. Considering recency effect in memories, we propose a forgetting model based on Ebbinghaus Forgetting Curve to cope with negative feedback. In addition, we introduce a Pareto optimization solver to guarantee a better trade-off between recency and model performance. In conclusion, we propose Pareto-based Multi-Objective Recommender System with forgetting curve (PMORS), which can be applied to any multi-objective recommendation and show sufficiently superiority when facing explicit negative feedback. We have conducted evaluations of PMORS and achieved favorable outcomes in short-video scenarios on both public dataset and industrial dataset. After being deployed on an online short video platform named WeChat Channels in May, 2023, PMORS has not only demonstrated promising results for both consistency and recency but also achieved an improvement of up to +1.45% GMV.
format Preprint
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institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Pareto-based Multi-Objective Recommender System with Forgetting Curve
Jin, Jipeng
Zhang, Zhaoxiang
Li, Zhiheng
Gao, Xiaofeng
Yang, Xiongwen
Xiao, Lei
Jiang, Jie
Information Retrieval
Recommender systems with cascading architecture play an increasingly significant role in online recommendation platforms, where the approach to dealing with negative feedback is a vital issue. For instance, in short video platforms, users tend to quickly slip away from candidates that they feel aversive, and recommender systems are expected to receive these explicit negative feedbacks and make adjustments to avoid these recommendations. Considering recency effect in memories, we propose a forgetting model based on Ebbinghaus Forgetting Curve to cope with negative feedback. In addition, we introduce a Pareto optimization solver to guarantee a better trade-off between recency and model performance. In conclusion, we propose Pareto-based Multi-Objective Recommender System with forgetting curve (PMORS), which can be applied to any multi-objective recommendation and show sufficiently superiority when facing explicit negative feedback. We have conducted evaluations of PMORS and achieved favorable outcomes in short-video scenarios on both public dataset and industrial dataset. After being deployed on an online short video platform named WeChat Channels in May, 2023, PMORS has not only demonstrated promising results for both consistency and recency but also achieved an improvement of up to +1.45% GMV.
title Pareto-based Multi-Objective Recommender System with Forgetting Curve
topic Information Retrieval
url https://arxiv.org/abs/2312.16868