Keyword-based Data Augmentation Guided Chinese Medical Questions Classification

XU Xinghao, Hu Rong, Du Guodong, Xiang Yan, Ma Lei
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Abstract

For the existing data of medical and health questions, the majority of them are so inarticulate short texts with few terms that the text features are sparse, posing a daunting challenge to relevant classification effort. Against this background, to enlarge the terms and datasets of short tests, this paper proposes a keyword-based data augmentation algorithm, which can be used in two ways: (1) With regard to short texts featuring few terms, for the purpose of keyword expansion, keywords are extracted by topic model and trained through domain knowledge-assisted word vector model to obtain synonyms of expanded keywords, so as to expand the original keywords; (2) with regard to incomplete health questions, the synonyms are used to replace original keywords. Then the augmented samples obtained by the above two methods are sent to the classifier. As a result, the algorithm in this paper significantly improves recall, precision and macro value compared to those without data augmentation.
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基于关键字的数据增强引导中医问题分类
对于现有的医疗健康问题数据,大多数都是术语少、表达不清的短文本,文本特征稀疏,给相关的分类工作带来了巨大的挑战。在此背景下,为了扩大短测试的术语和数据集,本文提出了一种基于关键字的数据增强算法,该算法可采用两种方式:(1)对于术语较少的短文本,以关键词扩展为目的,通过主题模型提取关键词,并通过领域知识辅助词向量模型进行训练,获得扩展后的关键词同义词,从而对原关键词进行扩展;(2)对于不完整的健康问题,用同义词代替原关键词。然后将上述两种方法得到的增广样本送入分类器。结果表明,本文算法在查全率、查准率和宏值方面都比未加数据增强的算法有显著提高。
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