Directed Edge Recommender System

Ios Kotsogiannis, E. Zheleva, Ashwin Machanavajjhala
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引用次数: 10

Abstract

Recommender systems have become ubiquitous in online applications where companies personalize the user experience based on explicit or inferred user preferences. Most modern recommender systems concentrate on finding relevant items for each individual user. In this paper, we describe the problem of directed edge recommendations where the system recommends the best item that a user can gift, share or recommend to another user that he/she is connected to. We propose algorithms that utilize the preferences of both the sender and the recipient by integrating individual user preference models (e.g., based on items each user purchased for themselves) with models of sharing preferences (e.g., gift purchases for others) into the recommendation process. We compare our work to group recommender systems and social network edge labeling, showing that incorporating the task context leads to more accurate recommendations.
定向边缘推荐系统
推荐系统在在线应用程序中已经变得无处不在,在这些应用程序中,公司根据明确或推断的用户偏好来个性化用户体验。大多数现代推荐系统专注于为每个用户找到相关的项目。在本文中,我们描述了有向边缘推荐的问题,其中系统推荐用户可以赠送,分享或推荐给他/她连接的另一个用户的最佳项目。我们提出了利用发送者和接收者的偏好的算法,通过将个人用户偏好模型(例如,基于每个用户为自己购买的物品)与共享偏好模型(例如,为他人购买礼物)集成到推荐过程中。我们将我们的工作与小组推荐系统和社交网络边缘标签进行了比较,表明结合任务上下文可以产生更准确的推荐。
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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