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引用次数: 1

摘要

当今世界的时代是基于多个在线社交网络,如twitter, Facebook, LinkedIn等等。用户使用这个在线社交网络在文本、音频、视频、图像、gif等方面进行交流,从而产生了大量的非结构化数据。因此,将这些非结构化数据分析为有意义的知识,应用于链接预测、犯罪学、公共卫生、推荐系统等各种应用就成为必然。大多数社交网络应用程序都需要用户的个人资料数据来分析数据。在本文中,我们提出了一种基于图的方法,根据用户的属性相似度来连接用户档案,并构建连接用户的社交网络图。该方法在LinkedIn数据集上进行了测试,结果令人鼓舞。该方法解决了与非结构化数据分析相关的各种问题。
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Profiling of Social Network Users using Proximity Measures
The era of today’s world is based on multiple online social network such as twitter, Facebook, LinkedIn and many more. User’s use this online social network for commination in terms of text, audio, video, images, gif’s and so on which leads to enormous amount of unstructured data generation. Hence, it becomes inevitable to analyze these unstructured data into meaningful knowledge which can be applied to various applications such as link prediction, criminology, public health, recommendation system and many more. Most applications of social networks require user profile data to analyze the data. In this paper, we propose a graph based methodology to connect user profiles based on their attributes similarity and build a social network graph of connected users. The methodology is tested on LinkedIn data set and results are promising. The methodology addresses various issues associated with unstructured data analysis.
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