基于词典的社交媒体暴力检测

IF 0.5 0 LANGUAGE & LINGUISTICS
E. Abdelzaher
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引用次数: 2

摘要

这项研究采用了一种基于词汇的方法来解决社交媒体上的暴力问题。它使用FrameNet 1.7(fn)和WordNet 3.1(wn)来构建一个特定于暴力领域的分层语言资源。所提出的词典将fn对语言和副语言知识的创新整合与wn的分层组织数据库联系起来。这种束缚减轻了收集所有与副语言暴力相关的场景并分层组织其语言实现的需要。考虑到fn和wn的多语言可用性,所提出的方法可以在国际上应用,以认知和定量地探索一个概念或现象。然后,该词典被应用于代表从唐纳德·特朗普的脸书公共页面检索到的帖子和评论的语料库。结果表明,所提出的词典以76.31的准确率回忆了语料库中92.68个与暴力有关的单词(F分数=83.7)。更重要的是,将wn与fn联系起来可以激发新框架的创建,建议对现有框架进行轻微修改,并主张在一些框架和同义词之间进行有希望的映射。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lexicon-based Detection of Violence on Social Media
This study adopts a lexicon-based approach to address violence on social media. It uses FrameNet 1.7 (fn) and WordNet 3.1 (wn) to build a hierarchical domain-specific language resource of violence. The proposed lexicon tethers fn’s innovative integration of linguistic and paralinguistic knowledge to wn’s hierarchically-organized database. This tether alleviates the need to gather all paralinguistic violence-associated scenes and organize their linguistic realizations hierarchically. The proposed methodology can be internationally applied, given the multilingual availability of fn and wn, to cognitively and quantitatively explore a concept or a phenomenon. The lexicon is applied, then, to a corpus representing posts and comments retrieved from Donald Trump’s Facebook public page. Results reveal that the proposed lexicon recalls 92.68 of the total violence-related words in the corpus with a 76.31 precision (F-score= 83.7). More important, relating wn to fn inspires the creation of new frames, suggests slight modifications to existing ones and advocates promising mapping between some frames and synsets.
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来源期刊
Cognitive Semantics
Cognitive Semantics Arts and Humanities-Language and Linguistics
CiteScore
0.50
自引率
0.00%
发文量
14
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