Improved Opinion Mining System to Enhance Accuracy using SVM with RBF Kernel

Authors

  • Umakant Sharma Dept. of Software Engineering
  • Abhilash Mishra Asst. Prof. Dept. of CSE/IT NITM College, Gwalior, India

Keywords:

opinion mining; model; application; SVM; RBF kernel.

Abstract

Opinions in social media platforms provide worldwide access to what people think about daily life topics/issues. Thus exploiting such a source of data to comprehend popular opinion can be exceptionally valuable in numerous situations, for instance by political gatherings keen on observing attitudes towards their policies. The opinion mining research field aims to develop automated approaches to accurately analyze such opinion data. Although there is much previous work on opinion mining, the majority of early studies analyzed text documents such as product and movie reviews. Only a limited number of studies have attempted to analyze public opinion in a political context. Twitter, which is now and again called a buy in and- publish social network, gives coordinated connections among users' and hosts feeling rich data over a wide arrangement of users' and points. In this manner, it is clear that mining client opinions and estimations from Twitter will be exceptionally valuable for some applications.

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Published

2018-09-10

How to Cite

Sharma, U. ., & Mishra, A. (2018). Improved Opinion Mining System to Enhance Accuracy using SVM with RBF Kernel. International Journal of Technical Innovation in Modern Engineering & Science, 4(9), 01–07. Retrieved from https://ijtimes.com/index.php/ijtimes/article/view/442