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How Do General-Purpose Sentiment Analyzers Perform when Applied to Health-Related Online Social Media Data?

机译:通用情绪分析仪如何在应用于健康相关的在线社交媒体数据时执行?

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Sentiment analysis has been increasingly used to analyze online social media data such as tweets and health forum posts. However, previous studies often adopted existing, general-purpose sentiment analyzers developed in non-healthcare domains, without assessing their validity and without customizing them for the specific study context. In this work, we empirically evaluated three general-purpose sentiment analyzers popularly used in previous studies (Stanford Core NLP Sentiment Analysis, TextBlob, and VADER), based on two online health datasets and a general-purpose dataset as the baseline. We illustrate that none of these general-purpose sentiment analyzers were able to produce satisfactory classifications of sentiment polarity. Further, these sentiment analyzers generated inconsistent results when applied to the same dataset, and their performance varies to a great extent across the two health datasets. Significant future work is therefore needed to develop context-specific sentiment analysis tools for analyzing online health data.
机译:情绪分析越来越多地用于分析推文和健康论坛帖子等在线社交媒体数据。然而,之前的研究经常采用在非医疗域中开发的现有,通用情绪分析仪,而无需评估其有效性,而无需为特定的研究背景定制它们。在这项工作中,我们经验评估了三种通用的情绪分析仪,其三个通用的情绪分析仪在先前的研究中使用(斯坦福核心NLP情绪分析,教科文和Vader),基于两个在线健康数据集和作为基线的通用数据集。我们说明这些通用情绪分析仪中没有一个能够产生令人满意的情绪极性分类。此外,这些情绪分析仪在应用于相同数据集时产生了不一致的结果,并且它们的性能在两个健康数据集中的大量方面变化。因此需要大量的未来工作来开发特定于背景的情感分析工具,以分析在线健康数据。

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