作者
C Pretty Diana Cyril, J Rene Beulah, Neelakandan Subramani, Prakash Mohan, Awari Harshavardhan, D Sivabalaselvamani
发表日期
2021/12
期刊
Concurrent Engineering
卷号
29
期号
4
页码范围
386-395
出版商
SAGE Publications
简介
The modern society runs over the social media for their most time of every day. The web users spend their most time in social media and they share many details with their friends. Such information obtained from their chat has been used in several applications. The sentiment analysis is the one which has been applied with Twitter data set toward identifying the emotion of any user and based on those different problems can be solved. Primarily, the data as of the Twitter database is preprocessed. In this step, tokenization, stemming, stop word removal, and number removal are done. The proposed automated learning with CA-SVM based sentiment analysis model reads the Twitter data set. After that they have been processed to extract the features which yield set of terms. Using the terms, the tweets are clustered using TGS-K means clustering which measures Euclidean distance according to different features like …
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