一种简约实用的冒犯性言语检测方法

H. Khan, Frances Yu, A. Sinha, S. Gokhale
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引用次数: 3

摘要

随着Twitter等社交媒体平台上仇恨和攻击性言论的激增,检测此类有毒内容的机器学习方法得到了重视。尽管取得了这些进步,但由于两个原因,实时检测这些在这些平台上共享的语音仍然是一个挑战。首先,这些方法在大量的特征上训练复杂的模型,这使得它们在实时部署时的计算效率受到质疑。此外,它们需要来自相同上下文的大量手动注释的数据集,而注释大型数据集非常耗时、容易出错且麻烦。本文提出了一种简洁实用的方法来检测冒犯性言语,以缓解这些挑战。该方法是简洁的,因为通过对两个公共领域数据集上常用的机器学习模型(逻辑回归,随机森林,神经网络)的综合评估,它证明了一个简单的逻辑回归模型在具有频率计数的单图上训练可以以超过90%的高精度检测仇恨言论。它是实用的,因为它演示了如何使用现有的标记训练数据集来训练模型,这些模型可以以中等的精度从完全未知的数据集检测攻击性内容。基于这些发现,本文为攻击性语音检测的基准训练数据集中可能需要的特征提供了指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Parsimonious and Practical Approach to Detecting Offensive Speech
With the proliferation of hateful and offensive speech on social media platforms such as Twitter, machine learning approaches to detect such toxic content have gained prominence. Despite these advances, real-time detection of such speech, while it is being shared on these platforms, remains a challenge for two reasons. First, these approaches train complex models on a plethora of features, which calls into question their computational efficiency for real-time deployment. Moreover, they require sizeable, manually annotated data sets from the same context, and annotating large data sets is extremely time-consuming, error-prone and cumbersome. This paper proposes a parsimonious and practical approach for the detection of offensive speech that alleviates these challenges. The approach is parsimonious because through a comprehensive evaluation of commonly used machine learning models (Logistic Regression, Random Forest, Neural Networks) on two public domain data sets it demonstrates that a simple Logistic Regression model trained on unigrams with frequency counts can detect hate speech with high accuracy of over 90%. It is practical because it demonstrates how an existing labeled training data set can be used to train models that can detect offensive content from a completely unknown data set with moderate accuracy. Based on these findings, the paper offers guidance on the characteristics that may be desirable in benchmark training data sets for offensive speech detection.
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