Friend Recommendation for Location-Based Mobile Social Networks

Cheng-Hao Chu, Wan-Chuen Wu, Cheng-Chi Wang, Tzung-Shi Chen, Jen-Jee Chen
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引用次数: 33

Abstract

Along with the rapid growth of Internet, many social websites are founded, and gradually begin to influence the people's life. Such as Facebook, the social network site provides the personalized recommendation system with friends-of-friends method to recommend new friends to users. The intuition is derived from the idea that it is more probable a person will know a friend of their friends rather than a random person. However, this approach does not consider any insights into human cognitive components such as social interactions. Thus, we propose a brand-new friend recommendation approach. The main concept is to recommend friends who have the similar interests or another thing with self to users. Besides utilizing the information on social networks, such as interests, the concept of real-life location and dwell time is further added in our approach. In this paper, we develop two comparison methods to provide quality friend recommendation. First method combines the existing landmark and user's dwell time at certain landmark to make the Voronoi diagram, and analyzes location similarity between users. Second methods is to analyze the interest lists from each social network accounts by using pattern matching and finding longest common subsequence. Through this two comparison methods, we assess the acceptable degree between two, and successfully implement the friend recommendation system.
基于位置的移动社交网络的朋友推荐
随着互联网的快速发展,许多社交网站应运而生,并逐渐开始影响人们的生活。如Facebook,社交网站提供个性化的推荐系统,以朋友的朋友的方式向用户推荐新朋友。这种直觉来自于这样一种观点,即一个人更有可能认识他朋友中的一个朋友,而不是随便认识一个人。然而,这种方法并没有考虑到人类认知成分的任何见解,比如社会互动。因此,我们提出了一种全新的好友推荐方法。其主要概念是向用户推荐与自己有相似兴趣的朋友或其他事物。除了利用社交网络上的信息,如兴趣,我们的方法还增加了现实生活中的位置和停留时间的概念。在本文中,我们开发了两种比较方法来提供高质量的朋友推荐。第一种方法将现有地标与用户在某地标的停留时间相结合,制作Voronoi图,分析用户之间的位置相似度。第二种方法是利用模式匹配和寻找最长公共子序列对每个社交网络账户的兴趣列表进行分析。通过这两种比较方法,我们评估了两者之间的可接受程度,并成功实现了好友推荐系统。
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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