仇恨语音检测并不像你想象的那么容易:仔细看看模型验证

Aymé Arango, Jorge Pérez, Bárbara Poblete
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引用次数: 138

摘要

仇恨言论是一个严重影响在线社会社区动态和有用性的重要问题。大型社交平台目前在自动检测和分类仇恨内容方面投入了重要资源,但收效甚微。另一方面,最先进的系统报告的结果表明,监督方法实现了几乎完美的性能,但仅在特定的数据集中。在这项工作中,我们分析了现有文献与实际应用之间的这种明显矛盾。我们仔细研究了先前工作中使用的实验方法及其在其他数据集上的可泛化性。我们的发现证明了方法上的问题,以及一个重要的数据集偏差。因此,目前最先进技术的性能要求被大大高估了。我们发现的问题主要与数据过拟合和抽样问题有关。我们讨论了对当前研究和重新进行实验的影响,以更准确地了解当前最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hate Speech Detection is Not as Easy as You May Think: A Closer Look at Model Validation
Hate speech is an important problem that is seriously affecting the dynamics and usefulness of online social communities. Large scale social platforms are currently investing important resources into automatically detecting and classifying hateful content, without much success. On the other hand, the results reported by state-of-the-art systems indicate that supervised approaches achieve almost perfect performance but only within specific datasets. In this work, we analyze this apparent contradiction between existing literature and actual applications. We study closely the experimental methodology used in prior work and their generalizability to other datasets. Our findings evidence methodological issues, as well as an important dataset bias. As a consequence, performance claims of the current state-of-the-art have become significantly overestimated. The problems that we have found are mostly related to data overfitting and sampling issues. We discuss the implications for current research and re-conduct experiments to give a more accurate picture of the current state-of-the art methods.
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