基于机器学习技术的手机推文方面词提取中的情感分析

IF 0.6 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS International Journal of Pervasive Computing and Communications Pub Date : 2021-10-18 DOI:10.1108/ijpcc-06-2021-0143
Venkatesh Naramula, A. Kalaivania
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引用次数: 2

摘要

目的本文旨在利用NLTK技术提取手机(iPhone和三星)推文中的方面词,多方面提取是其中一个挑战。然后,还使用了机器学习技术,可以根据监督策略进行训练,以预测和分类手机推文中的情绪。本文还提出了一种从客户推文中提取方面术语和情感极性的架构。设计/方法论/方法在基于方面的情感分析方面,术语提取是从在线用户生成的内容中提取不同方面的关键挑战之一。这项研究的重点是客户对不同移动产品的推文/评论,这是一种重要的固执己见的内容形式。使用不同的深度学习技术从使用Twitter API提取的客户推文中提取各个方面。Findings将结果与传统的机器学习方法(如随机森林算法、K-最近邻算法和支持向量机)进行比较,使用两个数据集iPhone推文和三星推文,以获得更好的准确性。原创性/价值在本文中,作者专注于使用NLTK技术提取手机(iPhone和三星)推文上的方面术语,多方面提取是其中一个挑战。然后,还使用了机器学习技术,可以根据监督策略进行训练,以预测和分类手机推文中的情绪。本文还提出了一种从客户推文中提取方面术语和情感极性的架构。
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Sentiment analysis in aspect term extraction for mobile phone tweets using machine learning techniques
Purpose This paper aims to focus on extracting aspect terms on mobile phone (iPhone and Samsung) tweets using NLTK techniques on multiple aspect extraction is one of the challenges. Then, also machine learning techniques are used that can be trained on supervised strategies to predict and classify sentiment present in mobile phone tweets. This paper also presents the proposed architecture for the extraction of aspect terms and sentiment polarity from customer tweets. Design/methodology/approach In the aspect-based sentiment analysis aspect, term extraction is one of the key challenges where different aspects are extracted from online user-generated content. This study focuses on customer tweets/reviews on different mobile products which is an important form of opinionated content by looking at different aspects. Different deep learning techniques are used to extract all aspects from customer tweets which are extracted using Twitter API. Findings The comparison of the results with traditional machine learning methods such as random forest algorithm, K-nearest neighbour and support vector machine using two data sets iPhone tweets and Samsung tweets have been presented for better accuracy. Originality/value In this paper, the authors have focused on extracting aspect terms on mobile phone (iPhone and Samsung) tweets using NLTK techniques on multi-aspect extraction is one of the challenges. Then, also machine learning techniques are used that can be trained on supervised strategies to predict and classify sentiment present in mobile phone tweets. This paper also presents the proposed architecture for the extraction of aspect terms and sentiment polarity from customer tweets.
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来源期刊
International Journal of Pervasive Computing and Communications
International Journal of Pervasive Computing and Communications COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
6.60
自引率
0.00%
发文量
54
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