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Deep Learning-based Sentiment Analysis in Persian Language

机译:基于深度学习的波斯语情感分析

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Recently, interests in the appliance of deep learning techniques in natural language processing tasks considerably increased. Sentiment analysis is one of the most difficult tasks in natural language processing, mostly in the Persian Language. Thousands of websites, blogs, social networks like Telegram, Instagram and Twitter update, and modify by Persian users around the world that contains millions of contexts. To extract knowledge of these huge amounts of raw data, Deep Learning techniques became increasingly popular but there is a number of challenges that the novel models encounter with them. In this research, a hybrid deep learning-based sentiment analysis model proposed and implemented on customer reviews data of Digikala Online Retailer website. We already applied the classifier based on various deep learning networks and regularization techniques. Finally, by utilizing a hybrid approach, we achieved the best performance of 78.3 of F1 score on three different classes: positive, negative, and neutral.
机译:最近,自然语言处理任务中深入学习技术的电机的利益大大增加。情感分析是自然语言处理中最困难的任务之一,主要是在波斯语中。数以千计的网站,博客,社交网络,如电报,Instagram和Twitter更新,并由世界各地的波斯用户修改,其中包含数百万个上下文。为了提取这些大量原始数据的知识,深度学习技术变得越来越受欢迎,但是新颖的模型与他们遇到了许多挑战。在这项研究中,拟议的基于混合的深度学习的情感分析模型,并在客户评论Digikala在线零售商网站数据上实施。我们已经根据各种深度学习网络和正则化技术应用了分类器。最后,通过利用混合方法,我们实现了78.3的f的最佳性能 1 分数在三种不同的课程:积极,消极和中立。

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