基于RNN的土耳其语推文多类情感分析

Ayşe Gül Eker, Kadir Eker, N. Duru
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引用次数: 1

摘要

推特是一个社交媒体平台,用户可以在上面发布被称为“推特”的信息。在Twitter上对产品、人物或事件发表评论;它需要阅读和解释成千上万的推文,以找出它所代表的情感。使用情感分析,可以在短时间内自动执行此过程。在本研究中;使用了由土耳其语推文组成的数据集,分为5种不同的情感类别。情感分析采用深度学习方法——RNN架构。在数据集中,“愤怒”、“恐惧”、“快乐”、“惊讶”、“悲伤”的每一种情绪都有相同数量的推文。比较了基于RNN架构的LSTM、BiLSTM和GRU进行多类情感分析模型的成功程度。最高的准确性;它已经在用双向LSTM建立的模型中,即BiLSTM,它在过去和未来的单词上下文中都非常成功。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Class Sentiment Analysis from Turkish Tweets with RNN
Twitter is a social media platform where users can post their messages called ‘tweets’. Comment on a product, person, or event on Twitter; It takes reading and interpreting thousands of tweets to find out what emotion it represents. With sentiment analysis, it is possible to perform this process automatically in a short time. In this study; A data set consisting of Turkish tweets divided into 5 different emotion categories was used. Sentiment analysis was carried out using RNN architecture, which is a deep learning method. In the dataset, there are equal numbers of tweets for each of the emotions “angry”, “fear”, “happy”, “surprise”, “sad”. The success of the models established by performing multi-class sentiment analysis with LSTM, BiLSTM and GRU based on RNN architecture was compared. Highest accuracy; It has been in the model established with bidirectional LSTM, that is, BiLSTM, which is very successful in past and future word contexts.
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