用自然语言解释训练分类器

Braden Hancock, P. Varma, Stephanie Wang, Martin Bringmann, Percy Liang, C. Ré
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引用次数: 140

摘要

训练准确的分类器需要许多标签,但是每个标签只提供有限的信息(对于二值分类来说是一个比特)。在这项工作中,我们提出了BabbleLabble,这是一个用于训练分类器的框架,其中注释器为每个标记决策提供自然语言解释。语义解析器将这些解释转换为可编程标记函数,该函数为任意数量的未标记数据生成嘈杂的标签,用于训练分类器。在三个关系提取任务中,我们发现用户能够通过提供解释而不仅仅是标签来更快地训练具有5-100分可比较F1分数的分类器。此外,考虑到标记功能的固有缺陷,我们发现一个简单的基于规则的语义解析器就足够了。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Training Classifiers with Natural Language Explanations
Training accurate classifiers requires many labels, but each label provides only limited information (one bit for binary classification). In this work, we propose BabbleLabble, a framework for training classifiers in which an annotator provides a natural language explanation for each labeling decision. A semantic parser converts these explanations into programmatic labeling functions that generate noisy labels for an arbitrary amount of unlabeled data, which is used to train a classifier. On three relation extraction tasks, we find that users are able to train classifiers with comparable F1 scores from 5-100 faster by providing explanations instead of just labels. Furthermore, given the inherent imperfection of labeling functions, we find that a simple rule-based semantic parser suffices.
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