Open Access Open Access  Restricted Access Subscription Access

A Novel Approach for the Assessment of Decision Stump & Upgraded Rf Classification Algorithms


Affiliations
1 School of Computer Science and Applications, REVA University, Bangalore, Karnataka, India
2 Department of Computer Science, Sri Venkateswara University, Tirupati, Andhra Pradesh,, India
 

The classification models in data mining consists of decision tree, neural network, genetic algorithm, rough set, statistical model, etc. In this research, we have proposed and deliberated a new algorithm called Upgraded Random Forest, which is applied for the classification of sensor discrimination dataset. Here we considered for classification of multisource Sensor Discrimination data. The Upgraded RF approach becomes extreme attention for multi-source classification. The methodology which we are developed is not only a nonparametric but it also applies for the assessment and significance of the specific variables in the classification.

Keywords

Data Mining, Classification, Decision Stump, Random Forest and Upgraded RF.
User
Notifications
Font Size

  • . Dr.K.Suresh Kumar Reddy, Dr.M.Jayakameswaraiah, Prof.S.Ramakrishna, Prof.M.Padmavathamma,” Development Of Data Mining System To Compute The Performance Of Improved Random Tree And J48 Classification Tree Learning Algorithms”, International Journal of Advanced Scientific Technologies, Engineering and Management Sciences (IJASTEMS), Volume.3, Special Issue.1, March.2017, Page 128-132, ISSN: 2454-356X
  • . Dr.M.Jayakameswariah,Dr.K.Saritha,Prof.S.Ramak rishna,Prof.S.Jyothi,“Development of Data Mining System to Evaluate Performance Accuracy of J48 and Enhanced Naïve Bayes Classifiers using Car Dataset”, International Journal Computational Science, Mathematics and Engineering,SCSMB-16-March-2016,PP- 167-170,E-ISSN: 2349-8439.
  • . G. Subbalakshami et al., “Decision Support in Heart Disease System using Naïve Bayes”, IJCSE, Vol. 2 No. 2, pp. 170-176, 2011, ISSN : 0976-5166
  • . L. Breiman, “Random Forests,” Machine Learning, Vol. 40. No. 1. 2001.
  • . R. Duda, P. Hart and D. Stork. Pattern Classification, 2nd edition. John Wiley, New York, 2001.
  • . S. Ramya , Dr. N. Radha, “Diagnosis of Chronic Kidney Disease Using Machine Learning Algorithms”, International Journal of Innovative Research in Computer and Communication Engineering, pp. 812-820 Vol 4, issue 1, ISSN: 2320-9798, 2016.
  • . S. Liu, R. Gao, D. John, J. Staudenmayer, and P. Freedson, “Multi-sensor data fusion for physical activity assessment,” IEEE Transactions on Biomedical Engineering, vol. 59, no. 3, pp. 687-696, March 2012.
  • . Sunil Joshi and R. C. Jain., “A Dynamic Approach for Frequent Pattern Mining Using Transposition of Database”, In proc of Second International Conference on Communication Software and Networks IEEE., p498-501. ISBN: 978-1-4244-5727-4, 2010.
  • . T. Garg and S.S Khurana, “Comparison of classification techniques for intrusion detection dataset using WEKA,” In IEEE Recent Advances and Innovations in Engineering (ICRAIE), pp. 1-5, 2014.
  • . V.Karthikeyani,”Comparative of Data Mining Classification Algorithm (CDMCA) in Diabetes Disease Prediction” International Journal of Computer Applications (0975 – 8887) Volume 60– No.12, December 2012.

Abstract Views: 256

PDF Views: 0




  • A Novel Approach for the Assessment of Decision Stump & Upgraded Rf Classification Algorithms

Abstract Views: 256  |  PDF Views: 0

Authors

M. Jayakameswaraiah
School of Computer Science and Applications, REVA University, Bangalore, Karnataka, India
R. Pinakapani
School of Computer Science and Applications, REVA University, Bangalore, Karnataka, India
Ravi Dandu
School of Computer Science and Applications, REVA University, Bangalore, Karnataka, India
S. Ramakrishna
Department of Computer Science, Sri Venkateswara University, Tirupati, Andhra Pradesh,, India

Abstract


The classification models in data mining consists of decision tree, neural network, genetic algorithm, rough set, statistical model, etc. In this research, we have proposed and deliberated a new algorithm called Upgraded Random Forest, which is applied for the classification of sensor discrimination dataset. Here we considered for classification of multisource Sensor Discrimination data. The Upgraded RF approach becomes extreme attention for multi-source classification. The methodology which we are developed is not only a nonparametric but it also applies for the assessment and significance of the specific variables in the classification.

Keywords


Data Mining, Classification, Decision Stump, Random Forest and Upgraded RF.

References