Collaborative Ranking via Learning Social Experts

Zhi Yin, Xin Wang, Xiao-Jun Wu, Chenxi Liang, Congfu Xu
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引用次数: 1

Abstract

Recommendation as a universal service has driven much research works, among which explicit feedback estimation (e.g., Rating prediction in the Netflix competition) is probably the most well-known and well-studied problem. However, in various online and mobile applications, data resources of implicit feedbacks from users' interaction behaviors and linked connections from pervasive social media sites are more abundant. In this paper, we aim to integrate the users' implicit feedbacks and social connections in order to improve the ranking-oriented recommendation performance. One fundamental challenge is the noise of the social connections, which may cause incorrect social influences during learning of users' preferences. As a response, we propose to learn social experts (rather than to rely on connected individual users) as the major influence source for a certain user, which is likely to generate more accurate social influences. Specifically, we design a novel user preference generation function so as to seamlessly incorporate influences from the learned social experts. We then develop a general learning algorithm correspondingly, i.e., Collaborative ranking via learning social experts (CRSE). To verify our idea of learning social experts, we study the ranking performance of CRSE on two real-world datasets, and find that it can produce more accurate recommendations than the state-of-the-art methods.
通过学习社会专家的协作排名
推荐作为一种通用服务已经推动了许多研究工作,其中显式反馈估计(例如Netflix竞争中的评级预测)可能是最知名和研究最多的问题。然而,在各种在线和移动应用中,来自用户交互行为的隐式反馈和来自无处不在的社交媒体网站的链接连接的数据资源更为丰富。在本文中,我们的目标是将用户的隐式反馈和社会联系结合起来,以提高排名导向的推荐性能。一个基本的挑战是社会联系的噪音,这可能会在学习用户偏好时造成不正确的社会影响。作为回应,我们建议学习社会专家(而不是依赖连接的个人用户)作为某个用户的主要影响力来源,这样可能会产生更准确的社会影响力。具体来说,我们设计了一个新的用户偏好生成函数,以便无缝地融合来自学习的社会专家的影响。然后,我们相应地开发了一种通用的学习算法,即通过学习社会专家(CRSE)进行协作排名。为了验证我们学习社会专家的想法,我们研究了CRSE在两个真实世界数据集上的排名性能,并发现它可以比最先进的方法产生更准确的推荐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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