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Analysis of Inter-Domain and Cross-Domain Drug Review Polarity Classification

机译:跨域和跨域药品审查极性分类分析

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摘要

Individuals increasingly rely on social media to discuss health-related issues. One way to provide easier access to relevant in- formation is through sentiment analysis – classifying text into polarity classes such as positive and negative. In this paper, we generated freely available datasets of WebMD.com drug reviews and star ratings for , , , , and drugs. We explored four supervised learning models: Naive Bayes, Random Forests, Support Vector Machines, and Convolutional Neural Networks for the purpose of determining the polarity of drug reviews. We conducted inter-domain and cross-domain evaluations. We found that SVM obtained the highest f-measure on average and that cross-domain training produced similar or higher results to models trained directly on their respective datasets.
机译:个人越来越依赖社交媒体来讨论与健康有关的问题。一种更容易获得相关信息的方法是通过情感分析-将文本分为极性类别,例如正面和负面。在本文中,我们免费生成了WebMD.com药品评论以及,,,和药品星级的数据集。为了确定药物评价的极性,我们探索了四个监督学习模型:朴素贝叶斯,随机森林,支持向量机和卷积神经网络。我们进行了域间和跨域评估。我们发现,SVM平均获得了最高的f​​度量,并且跨域训练所产生的结果与直接在各自数据集上训练的模型相似或更高。

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