NLP based Regional Videos Implementation

Authors

  • Dr. T.C. Manjunath Ph.D. (IIT Bombay), Sr. Member IEEE, Fellow IETE, Fellow IE, Chartered Engineer, Prof. & Head, ECE, Dept. DSCE, Bangalore, Karnataka, India
  • Achyutha Prasad N Research Scholar, SSIT & Assistant Professor, Dept of CSE, SSIT College, Siddhartha Univ., Kunigal Road, Maralur, Tumkur – 572105
  • Prof. Mahesh B. Neelagar Assistant Professor, Dept. of Electronics & Communication Engineering PG Centre-VLSI Design & Embedded Systems, Centre for Post-Graduate Studies, VTU Visvesvaraya Technological University, Macche, Jnana Sangama, Belagavi-18, Karnataka
  • Dr. Tian Jipeng Professor, Dept. of Computer Science & Engineering No. 41, Zhongyuan Road (M), Zhongyuan University of Technology, Henan, China

Keywords:

Sentiment Analysis, Kannada, SentiWordNet, Reviews, NLP

Abstract

Sentiment Analysis  is a part of Natural Language Processing, which can be very much characterized as the technique for resolve of the passionate tone meant by a progression of words, which are used to recognize the perspective on the author. In this paper, we present the advancement of Methodology for the Sentiment Analysis of Kannada Movie Reviews utilizing Machine Learning building up the thoughts of Natural Language Processing (NLP). The replication discoveries demonstrate the adequacy of the method utilized utilizing programing abilities. In this paper, a short survey of the explanation based Natural Language Processing System utilizing semi-managed bootstrapping, ML approaches of Support Vector Machine (SVM) and Random Forest (RF) procedure is being introduced more or less.

How to cite this article:
Jipeng T, Neelagar MB, Prasad NA et al. NLP based Regional Videos Implementation. J Adv Res Comp Tech Soft Appl 2020; 4(2): 13-15.

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Published

2020-10-30