基于改进词性标注的社交网络文本动作提取模型

Y. Jamoussi, Ameni Youssfi Nouira
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引用次数: 3

摘要

最近像Twitter、Facebook和MySpace这样的社交网络系统的病毒式增长,给研究界带来了许多有趣而具有挑战性的问题,这些问题使得能够进行上下文感知推理。社会网络是一组社会参与者(个人或组织),它们相互连接以提供一组交互。在本文中,我们考虑了从社交网络,特别是Twitter和Facebook中提取信息的问题。为了从社交网络中提取文本,我们需要几个词汇特征和大规模的词聚类。我们试图扩展现有的标记器,并开发我们自己的标记器,以支持目前在Facebook和Twitter中存在的不正确单词。我们在这项工作中的目标是利用之前的工作中为Twitter和在线会话文本开发的词汇特征,并开发一个基于动作构建巨大知识的提取模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An extracting model for constructing actions with improved part-of-speech tagging from social networking texts
The recent viral growth of social network systems such as Twitter, Facebook and MySpace have created many interesting and challenging problems to the research community, which enable to perform context aware-reasoning. Social networking is a set of social actors (individuals or organizations) that are connected to provide a set of interaction. We consider, in this paper, the problem of information extraction from social networking specially Twitter and Facebook. To extract text from social networking, we need several lexical features and large scale word clustering. We attempt to expand existing tokenizer and to develop our own tagger in order to support the incorrect words currently in existence in Facebook and Twitter. Our goal in this work is to benefit of the lexical features developed for Twitter and online conversational text in previous works, and to develop an extraction model for constructing a huge knowledge based on actions.
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