Automate Page Layout Optimization: An Offline Deep Q-Learning Approach

Zhou Qin, Wenyang Liu
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Abstract

The modern e-commerce web pages have brought better customer experience and more profitable services by whole page optimization at different granularity, e.g., page layout optimization, item ranking optimization, etc. Generating the proper page layout per customer’s request is one of the vital tasks during the web page rendering process, which can directly impact customers’ shopping experience and their decision-making. In this paper, we formulate the request-rendering interactions as a Markov decision process (MDP) and solve it by deep reinforcement learning (RL). Specifically, we present the design and implementation of applying offline Deep Q-Learning (DQN) to the contextual page layout optimization problem. Through the offline evaluation method, we demonstrate the effectiveness of the proposed framework, i.e., the RL agent has the potential to perform better than the baseline ranker by learning from the offline data set, e.g., the RL agent can improve the average cumulative rewards up to 36.69% comparing to the baseline ranker.
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自动页面布局优化:离线深度q -学习方法
现代电子商务网页通过不同粒度的整页优化,如页面布局优化、商品排名优化等,为客户带来更好的体验和更有利可图的服务。根据客户的需求生成合适的页面布局是网页呈现过程中的重要任务之一,它直接影响到客户的购物体验和决策。在本文中,我们将请求-呈现交互描述为马尔可夫决策过程(MDP),并通过深度强化学习(RL)进行求解。具体来说,我们提出了将离线深度q学习(DQN)应用于上下文页面布局优化问题的设计和实现。通过离线评估方法,我们证明了所提出框架的有效性,即通过学习离线数据集,RL代理具有比基线排名者表现更好的潜力,例如,与基线排名者相比,RL代理可以将平均累积奖励提高36.69%。
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