Friendbook: A Semantic-Based Friend Recommendation System for Social Networks

Rohan S. Kulkarni, V. D. Jadhav
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引用次数: 15

Abstract

TWENTY years past, folks generally created friends with others who live or work near themselves, like neighbors or colleagues. we have a tendency to decision friends created through this ancient fashion as G-friends, that stands for geographical location-based friends as a result of they're influenced by the geographical distances between one another. With the speedy advances in social networks, services like Facebook, Twitter and Google+ have provided us revolutionary ways in which of creating friends.According to Facebook statistics, a user has a mean of one hundred thirty friends, maybe larger than the other time in history. One challenge with existing social networking services is a way to suggest a good or reliable friend to a user. Most of them rely on pre-existing user relationships to choose friend candidates. for instance, Facebook depends on a social link analysis among those that already share common friends and recommends  users as potential friends.Unfortunately, this approach might not be the foremost applicable supported recent social science findings. according to these studies, the principles to group individuals along include: 1) habits or life style; 2) attitudes; 3) tastes; 4) ethical standards; 5) economic level; and 6) individuals they already know. life styles are typically closely correlate with daily routines and activities. Therefore, if we tend to may gather data on users’ daily routines and activities, we are able to exploit rule #1 and suggest friends to individuals supported their similar life styles. This recommendation mechanism may be deployed as a standalone app on smartphones for existing social network frameworks.
Friendbook:一个基于语义的社交网络好友推荐系统
20年前,人们通常会和在自己附近生活或工作的人交朋友,比如邻居或同事。我们倾向于通过这种古老的方式将朋友定义为G-friends,即基于地理位置的朋友,因为他们受到彼此之间地理距离的影响。随着社交网络的快速发展,Facebook、Twitter和Google+等服务为我们提供了革命性的交友方式。根据Facebook的统计数据,每个用户平均有130个朋友,可能比历史上任何时候都要多。现有社交网络服务面临的一个挑战是如何向用户推荐优秀或可靠的朋友。它们大多依靠已有的用户关系来选择好友候选人。例如,Facebook依赖于对那些已经有共同朋友的用户的社交链接分析,并推荐用户作为潜在的朋友。不幸的是,这种方法可能不是最适用的支持最近的社会科学发现。根据这些研究,将个人分组的原则包括:1)习惯或生活方式;2)态度;3)口味;4)道德标准;5)经济水平;还有他们已经认识的人。生活方式通常与日常生活和活动密切相关。因此,如果我们倾向于收集用户的日常生活和活动数据,我们就能够利用规则1,向支持他们相似生活方式的人推荐朋友。这种推荐机制可以作为智能手机上现有社交网络框架的独立应用程序部署。
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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