Domain-specific sentiment analysis approaches for code-mixed social network data

A. Pravalika, Vishvesh Oza, N. Meghana, Sowmya S Kamath
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引用次数: 27

Abstract

Sentiment Analysis is one of the prominent research fields in Natural Language Processing because of its widespread real-world applications. Customer preferences, options and experiences can be analyzed through social media, reviews, blogs and other online social networking site data. However, due to increasing informal usage of local languages in social media platforms, multi-lingual or code-mixed data is fast becoming a common occurrence. Mixed code is generated when users use more than a single language in social network comments. Such data presents a significant challenge for applications using sentiment analysis and is yet to be fully explored by researchers. Existing sentiment analysis methods applied to monolingual social data are not suitable for code-mixed data due to the inconsistency in the grammatical structure in these sentences. In this paper, a novel method focused on performing effective sentiment analysis of bilingual sentences written in Hindi and English is proposed, that takes into account linguistic code switching and the grammatical transitions between the two considered languages. Experimental evaluation using real-world, code-mixed datasets obtained from Facebook showed that the proposed approach achieved very good accuracy and was also efficient performance-wise.
面向代码混合社交网络数据的特定领域情感分析方法
情感分析是自然语言处理领域的重要研究领域之一,具有广泛的现实应用。客户的偏好、选择和体验可以通过社交媒体、评论、博客和其他在线社交网站数据进行分析。然而,由于当地语言在社交媒体平台上的非正式使用越来越多,多语言或代码混合数据正迅速成为一种常见现象。当用户在社交网络评论中使用多种语言时,就会生成混合代码。这些数据对使用情感分析的应用程序提出了重大挑战,并且尚未被研究人员充分探索。现有用于单语社交数据的情感分析方法不适用于混合语码数据,因为混合语码的句子语法结构不一致。本文提出了一种新的方法来对印地语和英语双语句子进行有效的情感分析,该方法考虑了两种语言之间的语言代码转换和语法转换。使用从Facebook获得的真实代码混合数据集的实验评估表明,所提出的方法取得了非常好的准确性,并且在性能方面也很有效。
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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