文本增强数据过滤的几何方法

Sherry J.H Feng, Edmund M-K Lai, Weihua Li
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引用次数: 0

摘要

如果训练数据量不足以进行监督学习,就需要进行数据扩增。对于自然语言处理任务来说,获得高质量的扩增数据并非易事。本文介绍的 GATFilter 是一种新颖的方法,用于过滤不合适的文本分类 (TC) 扩增文本数据。该方法利用几何概念,特别是原理成分和凸壳分析,巧妙地保留了扩增文本中单词的语义完整性。GATFilter 功能多样,适用于各种类型的文本扩增方法。使用多个数据集和扩增策略进行的实验表明,使用经过 GATFilter 过滤的扩增数据集训练的分类器在准确率、精确度、召回率和 F1 分数等关键性能指标上都有所提高。该方法的功效明显受到基础扩增技术质量的影响,这表明它具有补充和完善各种文本扩增策略的潜力。此外,我们的分析表明,GATFilter 尤其能提高生成高质量扩增数据的方法的效率。GATFilter 可在 Github 上公开在线获取1,也可作为 Python 软件包获取2。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Geometric Approach to Textual Augmented Data Filtering
Data augmentation is necessary if the amount of training data is insufficient for supervised learning. For natural language processing tasks, obtaining good quality augmented data is not easy. This paper introduces GATFilter, a novel method for filtering out inappropriate augmented textual data for text classification (TC). Utilizing geometric concepts, more specifically the principle component and convex hull analyses, this method adeptly preserves the semantic integrity of words within augmented texts. GATFilter is versatile and applicable across various types of textual augmentation methods. Experiments using several datasets and augmentation strategies showed that classifiers trained with GATFilter-filtered augmented data sets showed improvements in key performance metrics, including accuracy, precision, recall, and F1 score. The method’s efficacy is notably influenced by the quality of the underlying augmentation techniques, indicating its potential to complement and refine various text augmentation strategies. Furthermore, our analysis showed that GATFilter is particularly able to amplify the effectiveness of methods that generate good quality augmented data. GATFilter is openly available online on Github1, and as a Python package2.
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