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Finding Compatible People on Social Networking Sites, a Semantic Technology Approach

机译:在社交网站上寻找兼容人,一种语义技术方法

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The significant feature of a social networking website is the primary reason they are made for: connecting people and friends via internet. “Friend recommender systems” are wisely designed for finding people, most of whom tend to be with the same interests and backgrounds. These systems use a set of predefined items from which users specify their preferences simply by selecting from a fixed list. As a result, they can''t put it in their own words. Moreover, these systems only consider the “exact similarity matching” among the users'' interests to find and recommend new friends. The main focus of this paper is to introduce a new approach for matching more compatible friends on social networking websites. Contrary to existing approaches, our system let users specify their interests in their own words. Thus, users do not need to select their preferences from a predefined list. In addition, we define “compatibility” by introducing two new relations between users'' interests: “semantic” and “complementary” relations for the purpose of matching compatible users. We chose 50 members from Live Journal social network as our experimental case in this study and calculated compatibility degrees between each pair of them. The results show that the average error of this system is 0.2 which is acceptable in comparison with the similarity matching friend recommendation systems in which the average rate of error is 0.6.
机译:社交网站的重要功能是建立它们的主要原因:通过互联网连接人和朋友。 “朋友推荐系统”是为寻找人而设计的,他们中的大多数人往往具有相同的兴趣和背景。这些系统使用一组预定义的项目,用户可以通过简单地从固定列表中进行选择来从中指定其首选项。结果,他们不能用自己的话说。而且,这些系统仅考虑用户兴趣之间的“精确相似匹配”来寻找和推荐新朋友。本文的主要重点是介绍一种在社交网站上匹配更多兼容朋友的新方法。与现有方法相反,我们的系统允许用户用自己的话语指定他们的兴趣。因此,用户不需要从预定义列表中选择他们的偏好。另外,我们通过引入用户兴趣之间的两个新关系来定义“兼容性”:“语义”和“互补”关系,以匹配兼容用户。在本研究中,我们从Live Journal社交网络中选择了50个成员作为我们的实验案例,并计算了每对成员之间的兼容程度。结果表明,该系统的平均误差为0.2,这与平均误差率为0.6的相似度匹配好友推荐系统相比是可以接受的。

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