在线社交网络情感分析的机器学习方法

Chandrakant Mallick, Sarojananda Mishra, Parimal Kumar Giri, Bijay Kumar Paikaray
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引用次数: 2

摘要

在线社交网络提供了对个人心理行为的定量测量,并有助于分析社会或政治问题的一般立场。作为文本挖掘的研究领域,它遵循一种计算方法来确定文本和其他表达的观点、情感和主观性。此外,大多数方法都试图在不考虑情感的情况下对单词的句法信息进行建模。本研究简要介绍了用于情感分析的不同机器学习(ML)模型,并提出了一种有效的模块化方法,以在验证和测试Twitter数据时提供精确的准确性。目标是通过基于准确率和训练时间的不同方法的评估和比较来解决问题。该模型在最短的训练时间内达到了88.37%的准确率。仿真研究提出了一种有效的方法,可以对数据集进行彻底的分析和实现,重点是对情绪数据集的进一步验证,使tweet情绪分析更加准确。
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Machine learning approaches to sentiment analysis in online social networks
The online social network presents the quantitative measure of the psychological behaviour of individuals and helps to analyse the generic standpoint of social or political issues. As the field of research in text mining, it follows a computational approach to determine the opinions, sentiments, and subjectivity of text and other expressions. Moreover, the majority of approaches try to model the syntactic information of words without considering sentiment. The present study gives a brief narration of different machine learning (ML) models used for sentiment analysis and also proposes an efficient modular approach to give precise accuracy in validating and testing the Twitter data. The objective is to solve the problems through evaluation and comparison of different methods based on accuracy and training time. The proposed model achieves an accuracy of 88.37% with minimum possible training time. Simulation study states an effective way in which dataset may be thoroughly analysed and implemented with a focus on further validation of sentiment dataset to make tweet sentiment analysis more accurate.
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来源期刊
International Journal of Work Innovation
International Journal of Work Innovation Social Sciences-Communication
CiteScore
1.10
自引率
0.00%
发文量
10
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