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Social Media Sentiment Analysis On Twitter Datasets

In the era of growing world, Social Sites is one of the platform where lots of people interacted with it. Every individual directly or indirectly connected with the social sites. As we can see, People are used to about taking reviews about anything before doing it-as taking reviews of movies, restau...

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Main Authors: Tiwari, Shikha, Verma, Anshika, Garg, Peeyush, Bansal, Deepika
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creator Tiwari, Shikha
Verma, Anshika
Garg, Peeyush
Bansal, Deepika
description In the era of growing world, Social Sites is one of the platform where lots of people interacted with it. Every individual directly or indirectly connected with the social sites. As we can see, People are used to about taking reviews about anything before doing it-as taking reviews of movies, restaurants, online product shopping and many more. Taking reviews means knowing opinions about things. In a single manner it can state as Sentiment Analysis, or even it can be called as Opinion Mining or Data Mining. Here, the present work is come with the idea of Twitter Sentiment Analysis, in which process is designed to know the person thought about any specific tweet done by them. After knowing the people opinions about any issue, any individual can come up with the conclusion. To do this types of analysis, Present work has taken Natural Language Processing (NLP) in use. So this research paper describe the types of techniques used and also the procedure performed throughout the process.
doi_str_mv 10.1109/ICACCS48705.2020.9074208
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ispartof 2020 6th International Conference on Advanced Computing and Communication Systems (ICACCS), 2020, p.925-927
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subjects Data mining
Feature extraction
NLP
Sentiment analysis
Support vector machines
Training
Twitter
title Social Media Sentiment Analysis On Twitter Datasets
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