Author(s): Sundara Kanchana, Meenakshi.K, Velappa Ganapathy

Email(s): kanchana.j@ktr.srmuniv.ac.in , meenakshi.k@ktr.srmuniv.ac.in , ganapathy.v@ktr.srmuniv.ac.in

DOI: 10.5958/0974-360X.2017.00256.6   

Address: Sundara Kanchana1*, Meenakshi.K and2, Velappa Ganapathy3
1Academic Administrator, School of Computing, SRM University, Kancheepuram-603203, Tamil Nadu, India
2Assistant Professor, School of Computing, SRM University, Kancheepuram-603203, Tamil Nadu, India
3Professor, School of Computing, SRM University, Kancheepuram-603203, Tamil Nadu
*Corresponding Author

Published In:   Volume - 10,      Issue - 5,     Year - 2017


ABSTRACT:
Genre classification of Tamil songs is done based on mood, emotion etc. of the listener. The musical genre classification is based on three levels as base, mood and style. Our proposed methodology is comparison of genre based Tamil songs classification using Term Frequency and Inverse Document Frequency (tf-idf). So for this methodology has been applied for English and Korean songs only. In this paper, we are classifying the Tamil songs using the method based on tf-idf scores. The classifier establishes a relation between the features of the training samples and related categories. The frequency of word usage is identified by term frequency and inverse document frequency. Support Vector Machine (SVM) algorithm and Naïve Bayes algorithm (NB) are used in Weka classification tool for analysis. We have compared the experimental results of both the algorithms in musical genre classification. From the experimental values obtained using various parameters, we have shown that the Naïve Bayes algorithm has classified the genre marginally better than Support Vector Machine algorithm. We have considered 2000 Tamil songs for testing the genre classification. At present we have considered two genres for classification and the same classification can be extended to other genres in future.


Cite this article:
Sundara Kanchana, Meenakshi.K, Velappa Ganapathy. Comparison of Genre based Tamil Songs Classification using term Frequency and Inverse Document Frequency. Research J. Pharm. and Tech. 2017; 10(5):1449-1454. doi: 10.5958/0974-360X.2017.00256.6

Cite(Electronic):
Sundara Kanchana, Meenakshi.K, Velappa Ganapathy. Comparison of Genre based Tamil Songs Classification using term Frequency and Inverse Document Frequency. Research J. Pharm. and Tech. 2017; 10(5):1449-1454. doi: 10.5958/0974-360X.2017.00256.6   Available on: https://rjptonline.org/AbstractView.aspx?PID=2017-10-5-31


Recomonded Articles:

Author(s): Niha Naveed, Karthikeyan Murthykumar, Subasree Soundarajan, Sripradha Srinivasan

DOI: Not Available         Access: Open Access Read More

Author(s): Ravindranath S. Misal, Vishawas R. Potphode, Vijay R. Mahajan

DOI: 10.5958/0974-360X.2017.00218.9         Access: Open Access Read More

Author(s): Niharika, Navneet Verma

DOI: 10.5958/0974-360X.2016.00182.7         Access: Open Access Read More

Author(s): Ankit Patel, Pankaj Kushwah, Sujit Pillai, Ajay Raghuvanshi, Nitin Deshmukh

DOI: 10.5958/0974-360X.2017.00013.0         Access: Open Access Read More

Author(s): Sunanda Rao, Lakshmi T.

DOI:         Access: Open Access Read More

Author(s): S. R Suseem, Dhanish Joseph

DOI: 10.5958/0974-360X.2019.00067.2         Access: Open Access Read More

Author(s): Amina Mehrin Bano, Vishnupriya. V, Gayathri. R

DOI: 10.5958/0974-360X.2016.00171.2         Access: Open Access Read More

Author(s): Naveen M.R., Santhosh Y.L., Satish Kumar B.P

DOI: Not Available         Access: Open Access Read More

Author(s): Dhara Parekh, Pankaj Kapupara, Ketan Shah

DOI: dharaparekh92@gmail.com         Access: Open Access Read More

Author(s): Yarnykh T. G., Kotvitska A. A., Tykhonov A. I., Rukhmakova O. A.

DOI: 10.5958/0974-360X.2020.00614.9         Access: Open Access Read More

Author(s): Hayat M. Mukhtar, Vandna Kalsi

DOI: 10.5958/0974-360X.2018.00395.5         Access: Open Access Read More

Author(s): Rupali Deshmukh, Roshni Agrawal, Sarita Chauragde, Swati Lilhare, M. U. Mishra

DOI: 10.5958/0974-360X.2018.00831.4         Access: Open Access Read More

Author(s): Trilokchandran. B, Vijayakumar G, Thippareddy K S

DOI: 10.5958/0974-360X.2019.00612.7         Access: Open Access Read More

Author(s): Prabhakar Panzade, Prashant K Puranik

DOI: Not Available         Access: Open Access Read More

Author(s): Nuha Rasheed, Syed Abdul Rahman, Samreen Hafsa

DOI: 10.5958/0974-360X.2020.00306.6         Access: Open Access Read More

Author(s): Abhirup Dey, Mangala Lakshmi Ragavan, Sanjeeb Kumar Mandal, Nilanjana Das

DOI: 10.5958/0974-360X.2017.00136.6         Access: Open Access Read More

Author(s): Mohd Yousuf Ali, Md Shamim Qureshi, Md Hamed, Byasabhusan Das and K Purushotham Rao

DOI: Not Available         Access: Open Access Read More

Author(s): Loveleen Preet Kaur, Rajeev Garg, GD Gupta

DOI: Not Available         Access: Open Access Read More

Research Journal of Pharmacy and Technology (RJPT) is an international, peer-reviewed, multidisciplinary journal.... Read more >>>

RNI: CHHENG00387/33/1/2008-TC                     
DOI: 10.5958/0974-360X 

0.38
2018CiteScore
 
56th percentile
Powered by  Scopus


SCImago Journal & Country Rank


Recent Articles




Tags