仇恨语音识别系统的挑战:基于解的方法

A. Pawar, Pranav Gawali, Mangesh Gite, M. A. Jawale, P. William
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引用次数: 20

摘要

随着互联网上内容数量的增长,仇恨言论也在传播。在文本中识别仇恨言论的自动化方法面临许多挑战,我们对此进行了调查和评估。语言复杂性、对仇恨言论构成的不同看法以及算法训练和测试的数据可用性限制是一些困难。因此,可能很难解读当前许多方法所做决定背后的推理。通过我们的多视图支持向量机技术,我们给出了比神经方法更容易理解的接近最先进状态的支持向量机结果。此外,我们还研究了这项努力在技术和实际层面上面临的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Challenges for Hate Speech Recognition System: Approach based on Solution
Hate speech spreads as the quantity of content on the internet grows. Automated methods for identifying hate speech in text face a number of challenges, which we investigate and assess. Language complexity, differing views on what constitutes hate speech, and data availability restrictions for algorithm training and testing are some of the difficulties. As a result, it may be difficult to decipher the reasoning behind the decisions made by many current methods. With our multiview SVM technique, we give near-state of the art SVM results that are easier to comprehend than neural approaches. In addition, we look at the challenges that this endeavour faces on a technological and practical level.
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