A Truncated SVD Framework for Online Hate Speech Detection on the ETHOS Dataset

A. Chhabra, D. Vishwakarma
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Abstract

Hate content on social media is currently one of the most significant risks, where the victim is either a single individual or a group of people. In the current scenario, online web platforms are one of the most prominent ways to contribute to an individual's opinions and thoughts. Free sharing of ideas on an event or situation also bulks on the web. Information sharing is sometimes a bane for society if primarily used platforms are utilized with some lousy intention to spread hatred for intentionally creating chaos/ confusion among the public. Users take this as an opportunity to spread hate to get some monetary benefits, the detection of which is of paramount importance. This article utilizes the concept of truncated singular value decomposition (SVD) for detecting hate content on the ETHOS (Binary-Label) dataset. Compared with the baseline results, our framework has performed better in various machine learning algorithms like SVM, Logistic Regression, XGBoost, and Random Forest.
基于ETHOS数据集的在线仇恨语音检测截断SVD框架
社交媒体上的仇恨内容目前是最大的风险之一,受害者要么是一个人,要么是一群人。在目前的情况下,在线网络平台是表达个人观点和想法的最主要方式之一。关于事件或情况的免费分享也在网络上大量出现。如果主要使用的平台被用来传播仇恨,故意在公众中制造混乱/混乱,信息共享有时会对社会造成危害。用户将此作为传播仇恨的机会,以获得一些金钱利益,检测这些利益至关重要。本文利用截断奇异值分解(SVD)的概念来检测ETHOS(二进制标签)数据集上的仇恨内容。与基线结果相比,我们的框架在各种机器学习算法(如SVM, Logistic Regression, XGBoost和Random Forest)中表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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