Research Area:  Machine Learning
The expansion in the informal communication locales facilitates the way toward publicizing the results of associations and taking feelings from the clients. The associations which are showcasing their items need to comprehend what individuals are discussing their items. This can be accomplished by utilizing famous long-range informal communication locales. It has enhanced the heading of social media examination, which incorporates social network analysis, machine learning, and data mining. Presently a-days on account of the expansion in the interpersonal organizations, individuals began to utilize these sites (social organizing destinations) to share the data. Twitter is exceptionally prevalent for information mining in all the online networking locales as a result of its prominence and use by acclaimed individuals. In this paper, we will exhibit how the showcasing associations are publicizing their items or taking the criticism for their items utilizing Web-based social networking systems like Twitter. In this procedure, the framework will gather messages (tweets) from the locales and in light of that we will investigate the items input. Inputs of any item will be shown as tweets regarding positive, negative, or nonpartisan. The machine learning algorithms (Naive Bayes, maximum entropy) are utilized to choose the outcomes. We likewise play out a pre-preparing stage to enhance the information precision. The point of our paper is to arrange the suppositions from the messages from the long-range interpersonal communication.
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Author(s) Name:  G. Sowmya, K. Navya, G. Divya Jyothi
Journal name:  
Conferrence name:  First International Conference on Artificial Intelligence and Cognitive Computing
Publisher name:  Springer Nature
DOI:  10.1007/978-981-13-1580-0_38
Volume Information:  pp 397-405
Paper Link:   https://link.springer.com/chapter/10.1007/978-981-13-1580-0_38