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Main Authors: Li, Yisha, Gao, Lexi, Liu, Jingxin, Gao, Xiang, Li, Xin, Lu, Haiyang, Hong, Liyin
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.16253
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author Li, Yisha
Gao, Lexi
Liu, Jingxin
Gao, Xiang
Li, Xin
Lu, Haiyang
Hong, Liyin
author_facet Li, Yisha
Gao, Lexi
Liu, Jingxin
Gao, Xiang
Li, Xin
Lu, Haiyang
Hong, Liyin
contents Recommendation systems (RS) help users find interested content and connect authors with their target audience. Most research in RS tends to focus either on predicting users' immediate feedback (like click-through rate) accurately or improving users' long-term engagement. However, they ignore the influence for authors and the lifelong interaction value (LIV) of user-author pairs, which is particularly crucial for improving the prosperity of social community in short-video platforms. Currently, reinforcement learning (RL) can optimize long-term benefits and has been widely applied in RS. In this paper, we introduce RL to Reinforce Lifelong Interaction Value of User-Author pairs (RLIV-UA) based on each interaction of UA pairs. To address the long intervals between UA interactions and the large scale of the UA space, we propose a novel Sparse Cross-Request Interaction Markov Decision Process (SCRI-MDP) and introduce an Adjacent State Approximation (ASA) method to construct RL training samples. Additionally, we introduce Multi-Task Critic Learning (MTCL) to capture the progressive nature of UA interactions (click -> follow -> gift), where denser interaction signals are leveraged to compensate for the learning of sparse labels. Finally, an auxiliary supervised learning task is designed to enhance the convergence of the RLIV-UA model. In offline experiments and online A/B tests, the RLIV-UA model achieves both higher user satisfaction and higher platform profits than compared methods.
format Preprint
id arxiv_https___arxiv_org_abs_2507_16253
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Reinforce Lifelong Interaction Value of User-Author Pairs for Large-Scale Recommendation Systems
Li, Yisha
Gao, Lexi
Liu, Jingxin
Gao, Xiang
Li, Xin
Lu, Haiyang
Hong, Liyin
Information Retrieval
Recommendation systems (RS) help users find interested content and connect authors with their target audience. Most research in RS tends to focus either on predicting users' immediate feedback (like click-through rate) accurately or improving users' long-term engagement. However, they ignore the influence for authors and the lifelong interaction value (LIV) of user-author pairs, which is particularly crucial for improving the prosperity of social community in short-video platforms. Currently, reinforcement learning (RL) can optimize long-term benefits and has been widely applied in RS. In this paper, we introduce RL to Reinforce Lifelong Interaction Value of User-Author pairs (RLIV-UA) based on each interaction of UA pairs. To address the long intervals between UA interactions and the large scale of the UA space, we propose a novel Sparse Cross-Request Interaction Markov Decision Process (SCRI-MDP) and introduce an Adjacent State Approximation (ASA) method to construct RL training samples. Additionally, we introduce Multi-Task Critic Learning (MTCL) to capture the progressive nature of UA interactions (click -> follow -> gift), where denser interaction signals are leveraged to compensate for the learning of sparse labels. Finally, an auxiliary supervised learning task is designed to enhance the convergence of the RLIV-UA model. In offline experiments and online A/B tests, the RLIV-UA model achieves both higher user satisfaction and higher platform profits than compared methods.
title Reinforce Lifelong Interaction Value of User-Author Pairs for Large-Scale Recommendation Systems
topic Information Retrieval
url https://arxiv.org/abs/2507.16253