基于特征集的社交媒体家庭暴力话语意图分类

Sudha Subramani, H. Vu, Hua Wang
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引用次数: 16

摘要

对妇女的家庭暴力现已被认为是全世界一个严重和普遍的问题。家庭暴力和虐待是社会上许多问题的根源,被认为是社会禁忌话题。幸运的是,随着社交媒体的普及,社会福利社区和受害者支持团体为受害者分享他们的虐待故事提供了便利,并允许其他人给予建议和帮助受害者。因此,为了立即为这些需要提供资源,必须使受害者的具体信息与其他信息相区别。在本文中,我们将意图挖掘视为一个以滥用语篇为例的二元分类问题(滥用或建议)。为了解决这一问题,我们采用术语类交互方法,利用心理语言学线索和文本特征,从原始语料库中提取丰富的特征集。机器学习算法用于预测两个不同特征集之间分类器的准确性。我们的实验结果具有较高的分类准确率,为通过大社交媒体来理解一个大的社会问题,并利用大社交媒体服务于各种社区福利组织的信息需求提供了一个有希望的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intent Classification Using Feature Sets for Domestic Violence Discourse on Social Media
Domestic Violence against women is now recognized to be a serious and widespread problem worldwide. Domestic Violence and Abuse is at the root of so many issues in society and considered as the societal tabooed topic. Fortunately, with the popularity of social media, social welfare communities and victim support groups facilitate the victims to share their abusive stories and allow others to give advice and help victims. Hence, in order to offer the immediate resources for those needs, the specific messages from the victims need to be alarmed from other messages. In this paper, we regard intention mining as a binary classification problem (abuse or advice) with the usecase of abuse discourse. To address this problem, we extract rich feature sets from the raw corpus, using psycholinguistic clues and textual features by term-class interaction method. Machine learning algorithms are used to predict the accuracy of the classifiers between two different feature sets. Our experimental results with high classification accuracy give a promising solution to understand a big social problem through big social media and its use in serving information needs of various community welfare organizations.
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