Aspect-Based Sentiment Analysis of Drug Reviews Applying Cross-Domain and Cross-Data Learning

F. Gräßer, S. Kallumadi, H. Malberg, S. Zaunseder
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引用次数: 120

Abstract

Online review sites and opinion forums contain a wealth of information regarding user preferences and experiences over multiple product domains. This information can be leveraged to obtain valuable insights using data mining approaches such as sentiment analysis. In this work we examine online user reviews within the pharmaceutical field. Online user reviews in this domain contain information related to multiple aspects such as effectiveness of drugs and side effects, which make automatic analysis very interesting but also challenging. However, analyzing sentiments concerning the various aspects of drug reviews can provide valuable insights, help with decision making and improve monitoring public health by revealing collective experience. In this preliminary work we perform multiple tasks over drug reviews with data obtained by crawling online pharmaceutical review sites. We first perform sentiment analysis to predict the sentiments concerning overall satisfaction, side effects and effectiveness of user reviews on specific drugs. To meet the challenge of lacking annotated data we further investigate the transferability of trained classification models among domains, i.e. conditions, and data sources. In this work we show that transfer learning approaches can be used to exploit similarities across domains and is a promising approach for cross-domain sentiment analysis.
应用跨领域和跨数据学习的基于方面的药物评论情感分析
在线评论网站和意见论坛包含大量关于用户偏好和多个产品领域体验的信息。这些信息可以利用数据挖掘方法(如情感分析)获得有价值的见解。在这项工作中,我们检查在线用户评论在制药领域。该领域的在线用户评论包含与药物有效性和副作用等多个方面相关的信息,这使得自动分析非常有趣,但也具有挑战性。然而,分析对药物审查各个方面的看法可以提供有价值的见解,有助于决策,并通过揭示集体经验来改善对公共卫生的监测。在这项初步工作中,我们通过抓取在线药物评论网站获得的数据对药物评论执行多项任务。我们首先进行情绪分析来预测用户对特定药物的总体满意度、副作用和有效性的看法。为了应对缺乏注释数据的挑战,我们进一步研究了训练分类模型在领域(即条件和数据源)之间的可移植性。在这项工作中,我们表明迁移学习方法可用于利用跨域的相似性,并且是跨域情感分析的一种有前途的方法。
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