Understating the Psychological Behavior of Twitter Post: Through Sentiment Glossary Analysis

Authors

  • Vijay Sai Reddy UG Student, S.R.M institute of science and technology, India Author
  • D Sumanth Kalyan Reddy UG Student, S.R.M institute of science and technology, India Author
  • R. I. Minu Associate professor, S.R.M institute of science and technology, India Author

DOI:

https://doi.org/10.61841/vvr54n07

Keywords:

Sentimental Analysis, analyzing twitter data,, Twitter4j, NLP

Abstract

Sadness is an international well-being situation. Informal groups allow the prompted populace to proportion their encounters. Net-primarily based social networking furnishes boundless possibilities to impart encounters to their first-class recommendation. In cutting-edge situations and with accessible new advances, twitter can be applied thoroughly to gather statistics as opposed to social affair records in traditional approach. Twitter is a most commonplace on-line lengthy range informal communiqué gain that empower purchaser to proportion and select up records. This empowered us to precisely speak to client collaborations with the aid of relying at the record’s semantic substance. Pre-processed tweets are put away in database and people tweets are prominent and characterized whether it is purchaser watchwords related submit making use of help Vector gadget order. The customer watchwords can be anticipated whether or not it is a high-quality advice utilizing extremity. To offer an intelligent programmed framework which predicts the perception of the audit/tweets of the overall population published in online networking. This framework manages the difficulties that display up during the time spent Sentiment evaluation, non-stop tweets areviewed as they may be wealthy wellsprings data for assessment mining and feeling exam. The fundamental intention of this framework is to carry out consistent nostalgic examination at the tweets which might be extricated from the twitter and supply time based research to the patron.

 

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DOI: 10.4103/0975-3583.64432

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Published

31.10.2020

How to Cite

Reddy, V. S., Reddy, D. S. K., & Minu, R. I. (2020). Understating the Psychological Behavior of Twitter Post: Through Sentiment Glossary Analysis. International Journal of Psychosocial Rehabilitation, 24(8), 1036-1046. https://doi.org/10.61841/vvr54n07