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Multilingual sentiment analysis: from formal to informal and scarce resource languages

机译:多语种情感分析:从正式到非正式和稀缺资源语言

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摘要

The ability to analyse online user-generated content related to sentiments (e.g., thoughts and opinions) on products or policies has become a de-facto skillset for many companies and organisations. Besides the challenge of understanding formal textual content, it is also necessary to take into consideration the informal and mixed linguistic nature of online social media languages, which are often coupled with localised slang as a way to express 'true' feelings. Due to the multilingual nature of social media data, analysis based on a single official language may carry the risk of not capturing the overall sentiment of online content. While efforts have been made to understand multilingual sentiment analysis based on a range of informal languages, no significant electronic resource has been built for these localised languages. This paper reviews the various current approaches and tools used for multilingual sentiment analysis, identifies challenges along this line of research, and provides several recommendations including a framework that is particularly applicable for dealing with scarce resource languages.
机译:在产品或政策上分析与情绪(例如,思想和意见)相关的在线用户生成的内容已成为许多公司和组织的遗弃事实上的技能集。除了了解正式文本内容的挑战外,还有必要考虑在线社交媒体语言的非正式和混合语言性,这通常与本地化俚语相结合,作为表达“真实”感受的方式。由于社交媒体数据的多语种性质,基于单个官方语言的分析可能会带来不捕获在线内容的整体情绪的风险。虽然已经努力了解基于一系列非正式语言的多语言情感分析,但对于这些本地化语言没有建立一个重要的电子资源。本文审查了用于多语种情感分析的各种目前的方法和工具,沿着这一研究识别挑战,并提供了几种建议,包括框架,特别适用于处理稀缺资源语言。

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