噪音审计改善道德基础分类

Negar Mokhberian, F. R. Hopp, Bahareh Harandizadeh, Fred Morstatter, Kristina Lerman
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引用次数: 1

摘要

道德在文化、身份和情感中扮演着重要的角色。自然语言处理的最新进展表明,对文本中表达的道德价值观进行大规模分类是可能的。道德分类依赖于人类注释者在文本中标记道德表达,这提供了训练数据,以达到最先进的性能。然而,这些注释本质上是主观的,并且一些实例难以分类,导致由于错误或缺乏一致性而产生嘈杂的注释。训练数据中噪声的存在会损害分类器从文本中准确识别道德基础的能力。我们提出了两个指标来审计注释的噪声。第一个度量是实例标签的熵,它是注释者对实例应该如何标记的分歧的代理度量。第二个度量是由注释者分配给实例的标签的轮廓系数。这个指标利用了这样一种观点,即具有相同标签的实例应该具有相似的潜在表示,而偏离集体判断是错误的指示。我们在三个广泛使用的道德基础数据集上的实验表明,基于所提出的指标去除噪声注释可以提高分类性能。我们的代码可在https://github.com/negar-mokhberian/noise-audits找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Noise Audits Improve Moral Foundation Classification
Morality plays an important role in culture, identity, and emotion. Recent advances in natural language processing have shown that it is possible to classify moral values expressed in text at scale. Morality classification relies on human annotators to label the moral expressions in text, which provides training data to achieve state-of-the-art performance. However, these annotations are inherently subjective and some of the instances are hard to classify, resulting in noisy annotations due to error or lack of agreement. The presence of noise in training data harms the classifier's ability to accurately recognize moral foundations from text. We propose two metrics to audit the noise of annotations. The first metric is entropy of instance labels, which is a proxy measure of annotator disagreement about how the instance should be labeled. The second metric is the silhouette coefficient of a label assigned by an annotator to an instance. This metric leverages the idea that instances with the same label should have similar latent representations, and deviations from collective judgments are indicative of errors. Our experiments on three widely used moral foundations datasets show that removing noisy annotations based on the proposed metrics improves classification performance.11Our code can be found at: https://github.com/negar-mokhberian/noise-audits.
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