基于位置的Twitter环境中的协作名称推荐

N. Jamil, A. Alhadi, S. Noah
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引用次数: 13

摘要

自2004年以来,Friendster、Facebook、Twitter和许多其他微博都被引入。这些web 2.0应用程序已经成为一种强大的通信工具。每个社交网站都有数以百万计的用户,无论他们的位置和距离如何,他们都可以相互交流。因此,这些网站推荐系统的机制对于用户找到合适的朋友是很重要的。名称推荐应基于同质性的概念,即有共同之处的个体之间的关系高于没有共同之处的个体。Twitter是2006年开发的流行社交网站之一。许多Twitter用户都是被动用户。他们只是关注其他用户,但另一方面,他们没有很多追随者。出现这个问题是因为Twitter不需要互惠关系。为了克服这个问题,推荐系统可以通过考虑互惠关系来帮助用户搜索朋友。本研究的主要目标是使用协同过滤技术,根据地理位置推荐名称。用户的位置通过使用经纬度坐标从用户的个人资料中获取。为了测试目的,采用了韩国科学技术院(KAIST)提供的名人资料集。测试结果表明,利用地理位置在Twitter环境中协同推荐名称的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A collaborative names recommendation in the Twitter environment based on location
Friendster, Facebook, Twitter and many other microblogs have been introduced since 2004. These web 2.0 applications have become a powerful tool for communication. Each social web site has millions of users whose interact with each other regardless of their location and distance. Therefore, the mechanism of recommendation system for these sites is important for users to find suitable friends. Name recommendation should be made based on the concept of homophily which stated that relationships between individuals who have in common is higher than individuals who have nothing in common. Twitter is one of the popular social web sites that were developed in 2006. Many of the Twitter users are passive users. They just follow other users but on the other side they do not have many followers. This problem arises because reciprocal relationship is not required in Twitter. To overcome this problem, a recommendation system can help users in searching friends by taking into account reciprocal relationships. The main goal of this study is to use collaborative filtering techniques to recommend names based on geographical location. User's location is taken from the user's profile by using coordinates of latitude and longitude. Celebrities profile data sets provided by the Korea Advanced Institute of Science and Technology (KAIST) are taken for testing purposes. The result of the testing indicates the potential of exploiting geographical locations in collaboratively recommending names within Twitter environment.
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