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首页> 外文期刊>Advances in Science, Technology and Engineering Systems >A Survey of Text Mining in Social Media: Facebook and Twitter Perspectives
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A Survey of Text Mining in Social Media: Facebook and Twitter Perspectives

机译:社交媒体中的文本挖掘研究:Facebook和Twitter的观点

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摘要

Text mining has become one of the trendy fields that has been incorporated in several research fields such as computational linguistics, Information Retrieval (IR) and data mining. Natural Language Processing (NLP) techniques were used to extract knowledge from the textual text that is written by human beings. Text mining reads an unstructured form of data to provide meaningful information patterns in a shortest time period. Social networking sites are a great source of communication as most of the people in today’s world use these sites in their daily lives to keep connected to each other. It becomes a common practice to not write a sentence with correct grammar and spelling. This practice may lead to different kinds of ambiguities like lexical, syntactic, and semantic and due to this type of unclear data, it is hard to find out the actual data order. Accordingly, we are conducting an investigation with the aim of looking for different text mining methods to get various textual orders on social media websites. This survey aims to describe how studies in social media have used text analytics and text mining techniques for the purpose of identifying the key themes in the data. This survey focused on analyzing the text mining studies related to Facebook and Twitter; the two dominant social media in the world. Results of this survey can serve as the baselines for future text mining research.
机译:文本挖掘已成为趋势研究领域之一,已被纳入一些研究领域,例如计算语言学,信息检索(IR)和数据挖掘。使用自然语言处理(NLP)技术从人类编写的文本文本中提取知识。文本挖掘读取非结构化形式的数据,以在最短的时间内提供有意义的信息模式。社交网站是交流的重要来源,因为当今世界上大多数人在日常生活中都使用这些网站来保持彼此的联系。不使用正确的语法和拼写来写句子成为一种普遍的做法。这种做法可能导致不同的歧义,例如词汇,句法和语义,并且由于这种类型的不清楚的数据,很难找出实际的数据顺序。因此,我们正在进行调查,目的是寻找不同的文本挖掘方法以在社交媒体网站上获得各种文本顺序。这项调查旨在描述社交媒体中的研究如何使用文本分析和文本挖掘技术来识别数据中的关键主题。这项调查的重点是分析与Facebook和Twitter相关的文本挖掘研究;世界上两个主要的社交媒体。该调查的结果可以作为将来文本挖掘研究的基准。

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