可解释情感分析在医学中的应用

C. Zucco, Huizhi Liang, G. D. Fatta, M. Cannataro
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引用次数: 34

摘要

情感分析可以帮助从用户生成的文本信息中提取与观点和情感相关的知识。可应用于医疗领域,用于患者监护。随着大型数据集的可用性,深度学习算法也已成为情感分析的最新技术。然而,深度模型具有非人类可解释性的缺点,引发了与模型可解释性相关的各种问题。很少有人提出建立模型来解释他们的决策过程和行动。在这项工作中,我们回顾了当前的情感分析方法和现有的可解释系统。此外,我们提出了一个关键的审查可解释的情绪分析模型和讨论的见解应用可解释的情绪分析在医疗领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explainable Sentiment Analysis with Applications in Medicine
Sentiment Analysis can help to extract knowledge related to opinions and emotions from user generated text information. It can be applied in medical field for patients monitoring purposes. With the availability of large datasets, deep learning algorithms have become a state of the art also for sentiment analysis. However, deep models have the drawback of not being non human-interpretable, raising various problems related to model’s interpretability. Very few work have been proposed to build models that explain their decision making process and actions. In this work, we review the current sentiment analysis approaches and existing explainable systems. Moreover, we present a critical review of explainable sentiment analysis models and discussed the insight of applying explainable sentiment analysis in the medical field.
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