Recommender systems can mitigate the information overload problem by suggesting users' personalized items. In real-world recommendations such as e-commerce, a typical interaction between the system and its users is -- users are recommended a page of items and provide feedback; and then the system recommends a new page of items. To effectively capture such interaction for recommendations, we need to solve two key problems -- (1) how to update recommending strategy according to user's \textit{real-time feedback}, and 2) how to generate a page of items with proper display, which pose tremendous challenges to traditional recommender systems. In this paper, we study the problem of page-wise recommendations aiming to address aforementioned two challenges simultaneously. In particular, we propose a principled approach to jointly generate a set of complementary items and the corresponding strategy to display them in a 2-D page; and propose a novel page-wise recommendation framework based on deep reinforcement learning, DeepPage, which can optimize a page of items with proper display based on real-time feedback from users. The experimental results based on a real-world e-commerce dataset demonstrate the effectiveness of the proposed framework.
翻译:建议系统可以通过建议用户的个人化项目来减轻信息超载问题。在电子商务等现实世界建议中,系统与其用户之间的典型互动是:建议用户提供一页项目并提供反馈;然后系统建议新的项目页面。为了有效捕捉这种互动以征求建议,我们需要解决两个关键问题:(1) 如何根据用户的\ textit{实时反馈来更新建议战略;(2) 如何生成一个对传统建议系统构成巨大挑战的具有适当显示功能的项目页面。在本文中,我们研究了旨在同时应对上述两个挑战的面向页的建议问题。特别是,我们提出了一个原则性办法,共同生成一套补充项目和相应的战略,在二维页面中展示这些项目;提出一个基于深入强化学习的新的页性建议框架,即深Page,它可以优化一个基于用户实时反馈的适当显示的项目页面。基于现实世界电子商务数据集的实验结果显示了拟议框架的有效性。