End-to-End Deep Reinforcement Learning based Recommendation with Supervised Embedding

Feng Liu, Huifeng Guo, Xutao Li, Ruiming Tang, Yunming Ye, Xiuqiang He
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引用次数: 35

Abstract

The research of reinforcement learning (RL) based recommendation method has become a hot topic in recommendation community, due to the recent advance in interactive recommender systems. The existing RL recommendation approaches can be summarized into a unified framework with three components, namely embedding component (EC), state representation component (SRC) and policy component (PC). We find that EC cannot be nicely trained with the other two components simultaneously. Previous studies bypass the obstacle through a pre-training and fixing strategy, which makes their approaches unlike a real end-to-end fashion. More importantly, such pre-trained and fixed EC suffers from two inherent drawbacks: (1) Pre-trained and fixed embeddings are unable to model evolving preference of users and item correlations in the dynamic environment; (2) Pre-training is inconvenient in the industrial applications. To address the problem, in this paper, we propose an End-to-end Deep Reinforcement learning based Recommendation framework (EDRR). In this framework, a supervised learning signal is carefully designed for smoothing the update gradients to EC, and three incorporating ways are introduced and compared. To the best of our knowledge, we are the first to address the training compatibility between the three components in RL based recommendations. Extensive experiments are conducted on three real-world datasets, and the results demonstrate the proposed EDRR effectively achieves the end-to-end training purpose for both policy-based and value-based RL models, and delivers better performance than state-of-the-art methods.
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基于监督嵌入的端到端深度强化学习推荐
随着交互式推荐系统的发展,基于强化学习(RL)的推荐方法的研究成为了推荐界的热点。现有的RL推荐方法可以概括为一个统一的框架,包含三个组成部分,即嵌入组件(embedded component, EC)、状态表示组件(state representation component, SRC)和策略组件(policy component, PC)。我们发现电子商务不能很好地与其他两个组成部分同时训练。之前的研究通过预先训练和修复策略绕过了这个障碍,这使得他们的方法与真正的端到端方式不同。更重要的是,这种预训练和固定的电子商务存在两个固有的缺陷:(1)预训练和固定的嵌入无法模拟动态环境中用户偏好和物品相关性的演变;(2)预训练在工业应用中不方便。为了解决这个问题,在本文中,我们提出了一个基于端到端深度强化学习的推荐框架(EDRR)。在该框架中,精心设计了一个监督学习信号,使更新梯度平滑到EC,并介绍了三种合并方法并进行了比较。据我们所知,我们是第一个解决基于强化学习的建议中三个组件之间训练兼容性的人。在三个真实数据集上进行了大量的实验,结果表明,所提出的EDRR有效地实现了基于策略和基于价值的RL模型的端到端训练目的,并且提供了比现有方法更好的性能。
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