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Collaborative Filtering for People to People Recommendation in Social Networks

机译:社交网络中人对人推荐的协作过滤

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Predicting people other people may like has recently become an important task in many online social networks. Traditional collaborative filtering approaches are popular in recommender systems to effectively predict user preferences for items. However, in online social networks people have a dual role as both "users" and "items", e.g., both initiating and receiving contacts. Here the assumption of active users and passive items in traditional collaborative filtering is inapplicable. In this paper we propose a model that fully captures the bilateral role of user interactions within a social network and formulate collaborative filtering methods to enable people to people recommendation. In this model users can be similar to other users in two ways - either having similar "taste" for the users they contact, or having similar "attractiveness" for the users who contact them. We develop SocialCollab, a novel neighbour-based collaborative filtering algorithm to predict, for a given user, other users they may like to contact, based on user similarity in terms of both attractiveness and taste. In social networks this goes beyond traditional, merely taste-based, collaborative filtering for item selection. Evaluation of the proposed recommender system on datasets from a commercial online social network show improvements over traditional collaborative filtering.
机译:在许多在线社交网络中,预测他人可能喜欢的人已成为一项重要任务。传统的协作过滤方法在推荐系统中很流行,可以有效地预测用户对商品的偏好。但是,在在线社交网络中,人们同时具有“用户”和“项目”的双重作用,例如,发起和接收联系人。在这里,传统协作过滤中主动用户和被动项目的假设是不适用的。在本文中,我们提出了一个模型,该模型可以充分捕捉社交网络中用户交互的双边作用,并制定协作过滤方法以实现人与人之间的推荐。在此模型中,用户可以通过两种方式与其他用户相似-对他们联系的用户具有相似的“品味”,或者对于与他们联系的用户具有相似的“吸引力”。我们开发了SocialCollab,这是一种新颖的基于邻居的协作过滤算法,可根据用户在吸引力和品味方面的相似性,为给定用户预测他们可能想要联系的其他用户。在社交网络中,这超越了传统的,仅基于品味的协作筛选来进行项目选择。对来自商业在线社交网络的数据集上的推荐推荐系统的评估显示,与传统的协作过滤相比,已有改进。

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