Using games with a purpose and bootstrapping to create domain-specific sentiment lexicons

A. Weichselbraun, Stefan Gindl, A. Scharl
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引用次数: 26

Abstract

Sentiment detection analyzes the positive or negative polarity of text. The field has received considerable attention in recent years, since it plays an important role in providing means to assess user opinions regarding an organization's products, services, or actions. Approaches towards sentiment detection include machine learning techniques as well as computationally less expensive methods. Both approaches rely on the use of language-specific sentiment lexicons, which are lists of sentiment terms with their corresponding sentiment value. The effort involved in creating, customizing, and extending sentiment lexicons is considerable, particularly if less common languages and domains are targeted without access to appropriate language resources. This paper proposes a semi-automatic approach for the creation of sentiment lexicons which assigns sentiment values to sentiment terms via crowd-sourcing. Furthermore, it introduces a bootstrapping process operating on unlabeled domain documents to extend the created lexicons, and to customize them according to the particular use case. This process considers sentiment terms as well as sentiment indicators occurring in the discourse surrounding a articular topic. Such indicators are associated with a positive or negative context in a particular domain, but might have a neutral connotation in other domains. A formal evaluation shows that bootstrapping considerably improves the method's recall. Automatically created lexicons yield a performance comparable to professionally created language resources such as the General Inquirer.
使用带有目的和引导的游戏来创建特定领域的情感词典
情感检测分析文本的积极或消极极性。近年来,该领域受到了相当多的关注,因为它在提供评估用户对组织的产品、服务或行动的意见方面发挥了重要作用。情感检测的方法包括机器学习技术以及计算成本较低的方法。这两种方法都依赖于使用特定于语言的情感词汇,这些词汇是带有相应情感值的情感术语列表。创建、自定义和扩展情感词汇所涉及的工作是相当大的,特别是如果不太常见的语言和领域的目标是没有访问适当的语言资源。本文提出了一种半自动化的情感词汇生成方法,该方法通过众包的方式为情感术语分配情感值。此外,它还引入了一个在未标记的领域文档上操作的引导过程,以扩展所创建的词汇,并根据特定的用例定制它们。这个过程考虑情绪术语以及围绕特定主题的话语中出现的情绪指标。这些指标在某一特定领域具有积极或消极的含义,但在其他领域可能具有中性含义。一个正式的评估表明,自举大大提高了方法的召回率。自动创建的词典产生的性能可与专业创建的语言资源(如General Inquirer)相媲美。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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