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Opinion Mining and Sentiment Analysis in Social Media: Challenges and Applications

机译:社交媒体中的观点挖掘和情感分析:挑战与应用

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摘要

It is a widely accepted truth there are great values embedded in the opinion and sentiment expressed by users on social media platforms. Nowadays, it is quite common for researchers or engineers to adopt opinion mining and sentiment analysis techniques to extract enriched emotional information from online text content. However, given the characteristics of social media, such as dynamic, short, informal and context dependent, applying general opinion mining and sentiment analysis techniques originally designed for static long text corpora would lead to serious bias. In many applications, even research that not specialized in opinion mining and sentiment analysis, this problem is ignored unintentionally or unintentionally. Such ignorance may contribute the failure of some designs or unexplainable results. In this paper, we summarized these challenges in social media sentiment analysis. Some potential solutions for these challenges are also discussed. Finally, we also introduced several state-of-the-art techniques in social media sentiment analysis.
机译:这是一个广为接受的事实,在社交媒体平台上,用户表达的意见和情感中蕴含着巨大的价值。如今,对于研究人员或工程师而言,采用观点挖掘和情感分析技术从在线文本内容中提取丰富的情感信息已经非常普遍。但是,考虑到社交媒体的特征(例如动态,简短,非正式和上下文相关),应用最初为静态长文本语料库设计的一般意见挖掘和情感分析技术将导致严重的偏见。在许多应用中,即使不是专门从事观点挖掘和情感分析的研究,也可能无意或无意地忽略了此问题。这种无知可能会导致某些设计失败或无法解释的结果。在本文中,我们总结了社交媒体情感分析中的这些挑战。还讨论了应对这些挑战的一些潜在解决方案。最后,我们还介绍了社交媒体情感分析中的几种最新技术。

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