Sentiment Orientation from Code-mixed Social Media Data

K. Asnani
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Abstract

Collecting and evaluating data is becoming an effectively admissible challenge in the highly connected world. In the 21st century, with the advent of social networks getting popular, the social media information is getting archived at alarming rates. The use of local language in informal fashion is very common on social media platform. In natural language processing, Sentiment Analysis (SA) is a specialized process of determining user orientation from opinion data floating on social web. Code-mixed social media data in specific is challenging to process, due to mixing of varied languages used to portray the linguistic efficiency. In this paper, we propose a model called Code-mixed Sentiment Analyzer (cmSentiAnalyzer) to derive sentiment orientation from code-mixed sentences. Our proposed model has used language features across code-mixed languages to map the words occurring in different languages to a common space. Our experiments reveal that cmSentiAnalyzer outperforms baseline approaches in sentiment analysis for code-mixed text by 2% in accuracy and 89% of average precision.
来自代码混合社交媒体数据的情感取向
在高度互联的世界中,收集和评估数据正成为一项有效的挑战。在21世纪,随着社交网络的普及,社交媒体信息以惊人的速度被归档。在社交媒体平台上,以非正式方式使用当地语言是很常见的。在自然语言处理中,情感分析是一种从社交网络上的意见数据中确定用户倾向的专门过程。代码混合的社交媒体数据尤其具有挑战性,因为用于描述语言效率的各种语言混合在一起。本文提出了一个语码混合情感分析器(cmSentiAnalyzer)模型,用于从语码混合句子中提取情感倾向。我们提出的模型使用了跨代码混合语言的语言特征,将不同语言中出现的单词映射到一个公共空间。我们的实验表明,cmSentiAnalyzer在代码混合文本的情感分析中比基线方法的准确率高2%,平均精度高89%。
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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