关于公司推文聚类的难度

SMUC '10 Pub Date : 2010-10-30 DOI:10.1145/1871985.1872001
Fernando Pérez-Téllez, David Pinto, J. Cardiff, Paolo Rosso
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引用次数: 39

摘要

Twitter是一种新的成功的Web 2.0技术,数以百万计的人和公司使用它来发布简短的消息(“tweet”),目的是分享经验和/或对产品或服务的意见。由于这种类型的技术中有大量可用的信息,因此显然需要新的系统来挖掘这些消息,以便获得有关twitter用户集体思维的信息(例如,用于意见或情感分析)。推特分析是一项非常重要的任务,因为评论,意见,建议,投诉可以用作营销策略或确定公司声誉的信息。为此,有必要确定tweet是否指的是公司,这不是一个简单的关键字搜索过程,因为一个名称可能有多种上下文可以使用。这项工作的目的是提出并比较一些基于聚类的不同方法,以确定给定的tweet是否指的是特定的公司。为此,我们使用了一种丰富的方法来改进tweet的表示,从而提高聚类公司tweet任务的性能。获得的结果是有希望的,并突出了这项任务的难度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the difficulty of clustering company tweets
Twitter is a new successful technology of the Web 2.0 genre which is used by millions of people and companies to publish brief messages ("tweets") with the purpose of sharing experiences and/or opinions about a product or service. Due to the huge amount of information available in this type of technology, there is a clear need for new systems that can mine these messages in order to derive information about the collective thinking of twitterers (e.g. for opinion or sentiment analysis). Tweet analysis is a very important task because comments, opinions, suggestions, complaints can be used as marketing strategies or for determining information on a company's reputation. For this purpose, it is necessary to establish whether a tweet refers to a company or not, which is not a straightforward keyword search process as there may be multiple contexts in which a name can be used. The aim of this work is to present and compare a number of different approaches based on clustering that determine whether a given tweet refers to a particular company or not. For this purpose, we have used an enriching methodology in order to improve the representation of tweets and as a consequence the performance of the clustering company tweets task. The obtained results are promising and highlight the difficulty of this task.
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