EnhancedRL: An Enhanced-State Reinforcement Learning Algorithm for Multi-Task Fusion in Recommender Systems
Peng Liu, Cong Xu, Jiawei Zhu, Ming Zhao, Bin Wang

TL;DR
EnhancedRL introduces an innovative reinforcement learning algorithm for multi-task fusion in recommender systems, leveraging comprehensive features and a novel actor-critic framework to improve long-term user engagement.
Contribution
It is the first to incorporate item features into RL-based multi-task fusion, significantly enhancing recommendation performance through a redesigned actor-critic model.
Findings
+3.84% user valid consumption
+0.58% user duration time
Successfully deployed in large-scale industrial RS
Abstract
As a key stage of Recommender Systems (RSs), Multi-Task Fusion (MTF) is responsible for merging multiple scores output by Multi-Task Learning (MTL) into a single score, finally determining the recommendation results. Recently, Reinforcement Learning (RL) has been applied to MTF to maximize long-term user satisfaction within a recommendation session. However, due to limitations in modeling paradigm, all existing RL algorithms for MTF can only utilize user features and statistical features as the state to generate actions at the user level, but unable to leverage item features and other valuable features, which leads to suboptimal performance. Overcoming this problem requires a breakthrough in the existing modeling paradigm, yet, to date, no prior work has addressed it. To tackle this challenge, we propose EnhancedRL, an innovative RL algorithm. Unlike existing RL-MTF methods, EnhancedRL…
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Taxonomy
TopicsReinforcement Learning in Robotics · Online Learning and Analytics · Recommender Systems and Techniques
