印度语混合码社交媒体文本情感分析(SA-CMSMT

Gazi Imtiyaz Ahmad, Jimmy Singla
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引用次数: 1

摘要

web 2.0平台的到来和社交网站的日益普及使得网络上的社交媒体内容激增。这些平台还提供多语言界面,让人们可以用自己的母语自由写作。在过去的几十年里,社交媒体数据中出现了一种被称为代码混合的新现象,引起了社会语言学家和自然语言处理领域的研究人员的关注。然而,由于代码混合现象中存在的文本的非正式性质,从数据提取到摘要都存在许多挑战。代码混合数据的情感分析是近年来兴起的一个重点研究领域。NLP研究者的目标是提供自然语言处理(NLP)工具来收集、分析、评估和总结代码混合数据。在对代码混合社交媒体文本进行情感分析时,研究人员必须处理数据集构建、预处理、注释、语言识别、特征提取、特征选择和情感分类等问题。本文概述了在码混合印度语言文本数据情感分析方面所做的工作。
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Sentiment Analysis of Code-Mixed Social Media Text (SA-CMSMT) in Indian-Languages
The arrival of web 2.0 platforms and increasing usage of social networking sites have proliferated social media content on the web. These platforms also provides multilingual interface to allow people to write freely in their native language. Over the past few decades, a new phenomenon called code-mixing has been observed in social media data which has attracted attention of researchers in sociolinguists and Natural Language Processing domains. However, due to informal nature of the text present in code-mixing phenomenon, there are a number of challenges ranging from data extraction to summarization. Sentiment Analysis of code-mixed data is a key research field which has emerged in the recent past. NLP researchers aim to provide natural language processing (NLP) tools that can collect, analyzed, evaluate, and summarize code-mixed data. The researchers had to deal with dataset construction, preprocessing, annotation, language identification, feature extraction, feature selection, and sentiment classification when it came to sentiment analysis of Code-mixed Social Media Text. This paper provides an overview of work carried out in sentiment analysis of code-mixed Indian languages textual data.
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