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SmPFT: Social media based profile fusion technique for data enrichment

机译:SMPFT:基于社交媒体的简介融合技术,用于数据丰富

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People use different social networking platforms for distinct purposes. The information across each micro-blogging site is often partial. A better profile of an individual can be built, if we amalgamate the complementary information from various sites. This data enrich profile can be useful in a number of online services i.e. marketing of any product across sites, friend recommendation, etc. To integrate profile information, it is essential to identify individuals in distinct social networking platforms. This study aims to identify identical users across different social media platforms. Existing works on user profile matching frameworks are restricted to certain social networks as some of the previously available streaming APIs are not available now. In this work, there are no such dependencies over the streaming APIs as it is based on the uniqueness of usernames, which are identical among various social networking sites. We also efficiently exploit the information redundancies, due to individual similar behavioral patterns which can be used during mapping. We have tested our system over 500 users in the real-time scenario, considering only those profiles which generate their content predominately in the English language. The total dataset comprises of over 1.1 Million tweets and 0.63 Million URLs, in which 35.6% URLs contained the geotagged information. Our model is able to identify 6.3% more identical users than the traditional approaches. There are several application areas such as friends recommendation, future place prediction, leaders identification, and information diffusion across social media sites that can benefit from the out coming of this work. (C) 2019 Elsevier B.V. All rights reserved.
机译:人们使用不同的社交网络平台进行独特的目的。每个微博型站点的信息通常是部分的。如果我们合并来自各种网站的互补信息,可以建立一个更好的个人档案。此数据丰富的个人资料可以在许多在线服务中有用,即在网站,朋友推荐等中营销任何产品,以集成配置文件信息,必须识别不同的社交网络平台中的个人。本研究旨在确定不同社交媒体平台的相同用户。现有的用户个人资料匹配框架的工作仅限于某些社交网络,因为某些以前可用的流API现在不可用。在这项工作中,在流式传输API上没有这样的依赖性,因为它基于用户名的唯一性,在各种社交网站之间是相同的。由于可以在映射期间使用的单独类似的行为模式,我们还有效利用信息冗余。我们已经在实时方案中测试了我们的系统超过500个用户,仅考虑这些配置文件,这些配置文件主要以英语为主的内容。总数据集包括超过110万推文和0.63亿个URL,其中35.6%的URL包含地理标记信息。我们的模型能够识别比传统方法更相同的用户。有几个应用领域,如朋友推荐,未来的预测,领导者识别,以及跨社交媒体网站的信息扩散,可以从这项工作的出现中受益。 (c)2019 Elsevier B.v.保留所有权利。

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