Unravelling Emotional Tones: A Hybrid Optimized Model for Sentiment Analysis in Tamil Regional Languages

Sangeetha M, N. K
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引用次数: 0

Abstract

Review comments from digital platform such as Facebook, Twitter and YouTube used for identification of emotional tones from text. Nowadays, reviews are posted in different languages such as English, French, Chinese, and Indian regional languages such as Tamil, Telegu, and Hindi. Identification of emotional tones from text written in Indian regional language is challenging. During the translation of the regional language to the English language for sentiment analysis, lexical and pragmatic ambiguity are the major problem. The above problem arises due to dialects in language such as regional, standard, and social dialects. In this paper, dialect-based ambiguity problems solve through proposed Hybrid optimized deep learning transformer Models like M-BERT, M-Roberta, and M-XLM-Roberta for Tamil language dialects recognise and classified. The proposed algorithms provide better sentimental analysis after Hybrid optimization due to adaptation mechanisms, dynamic changes in the parameters and strategies in fine-tuning the search. The proposed Hybrid optimized algorithms perform better than existing algorithms such as SVM, Naïve Bayes, and LSTM with an accuracy of 95%.
解读情感基调:泰米尔地区语言情感分析的混合优化模型
来自 Facebook、Twitter 和 YouTube 等数字平台的评论意见可用于识别文本中的情感基调。如今,评论以不同的语言发布,如英语、法语、中文和印度地区语言,如泰米尔语、Telegu 语和印地语。从用印度地方语言书写的文本中识别情感基调具有挑战性。在将地方语言翻译成英语进行情感分析的过程中,词汇和语用歧义是主要问题。产生上述问题的原因是语言中的方言,如地区方言、标准方言和社会方言。本文提出了混合优化深度学习转换器模型,如 M-BERT、M-Roberta 和 M-XLM-Roberta,用于泰米尔语方言识别和分类,从而解决了基于方言的歧义问题。由于采用了适应机制、参数动态变化和微调搜索策略,混合优化后的拟议算法提供了更好的情感分析。与 SVM、Naïve Bayes 和 LSTM 等现有算法相比,混合优化算法的准确率高达 95%。
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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