Sentiment analysis on medical text using combination of machine learning and SO-CAL scoring

Tri Nguyen, Linh Diep-Phuong Nguyen, T. Cao
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引用次数: 7

Abstract

Identifying emotional polarization in a medical report is important in screening, acquiring and synthesizing knowledge of physicians before making a clinical decision. We consider this as a classification problem whose input is a set of sentences collected from medical articles and output is the polarization of each sentence labeled as a positive, negative or neutral one. In this paper, we propose to combine machine learning with natural language processing techniques. For machine learning, we use three features, namely, N-gram, Change Phrase, and Negative ones, extracted from a data set to build an emotion-polarization analysis system. Simultaneously, we incorporate SO-CAL scoring into the system. Our experiments show that this combination improves the classification accuracy.
结合机器学习和SO-CAL评分的医学文本情感分析
在做出临床决定之前,在医学报告中识别情绪极化对于筛选、获取和综合医生的知识非常重要。我们认为这是一个分类问题,其输入是从医学文章中收集的一组句子,输出是每个句子的极化,标记为积极,消极或中性。在本文中,我们建议将机器学习与自然语言处理技术相结合。对于机器学习,我们使用从数据集中提取的N-gram、Change Phrase和Negative ones三个特征来构建情绪极化分析系统。同时,我们将SO-CAL评分纳入系统。我们的实验表明,这种组合提高了分类精度。
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