Investigation of Lazy Classification in Data Mining using WEKA tool

Authors

  • Paramjeet Kaur  Department of Computer Science and Applications, Chaudhary Devi Lal University, Sirsa, Haryana, India
  • Poonam Rani  Assistant Professor, Department of Computer Science and Applications, Chaudhary Devi Lal University, Sirsa, Haryana, India

Keywords:

Lazy Learning, Data mining, KSTAR, LWL, IBK

Abstract

Lazy classification is would allow data domain of complex nature that cannot be properly explained by various learning algorithms. In this research we are getting Correlation coefficient error, mean absolute error, root mean square error, relative absolute error, root relative square error analysis using WEKA. Calculation of mean absolute error, root mean square error, relative absolute error, root relative square error analysis using WEKA would be made for KSTAR, LWL, and IBK. Comparative analysis would be made of all these three lazy classifiers. Here we would take real dataset of advance handsets. In this reading there are mobile name, screen size, CPU speed, number of Sims, Ram size and pixel. It is found from research that there is minimum error in case of KSTAR.

References

  1. Classification in Data Mining" Volume 12 Issue 2 Version 1.0 January (2012).
  2. Ms S. Vijayarani, Ms M. Muthulakshmi(2013) "Comparative Analysis of Bayes and Lazy Classification Algorithms" International Journal of Advanced Research in Computer and Communication Engineering Vol. 2, Issue 8, August 2013.
  3. Solomon Getahun Fentie Abebe Demessie Alemu.(2014) "A Comparative Study on Performance Evalution of Eager versus Lazy Learning Methods" International Journal of Computer Science and Mobile Computing Vol. 3, Issue. 3, March (2014).
  4. Md. Nurul Amin, Md. Ahsan Habib (2015) Comparison of Different Classification Techniques Using WEKA for Hematological Data American Journal of Engineering Research (AJER) Volume-4, Issue-3(2015).
  5. Vaithiyanathan, V., K. Rajeswari, Kapil Tajane, and Rahul Pitale. "Comparison of Different Classification Techniques Using Different Datasets."Vol.6, no. 2 (2013).
  6. Sharma, Narendra, Aman Bajpai, and Mr Ratnesh Litoriya. "Comparison various clustering algorithms of WEKA tools."Volume2, no.5 (2012).
  7. Salvithal, Nikhil N., and R. B. Kulkarni. "Evaluating Performance of Data Mining Classification Algorithm in WEKA." Vol 2, no. 10 (2013).
  8. Khan, S. A., J. H. Epstein, K. J. Olival, M. M. Hassan, M. B. Hossain, K. B. M. A. Rahman, M. F. Elahi et al. "Hematology and serum chemistry reference values of stray dogs in Bangladesh." ." Vol. 1: 13-20 (2011).
  9. Zhang, Wenjing, Donglai Ma, and Wei Yao. "Medical Diagnosis Data Mining Based on Improved Apriori Algorithm." Journal of Networks 9, no. 5: 1339-1345 (2014).
  10. Nookala, Gopala Krishna Murthy, Bharath Kumar Pottumuthu, Nagaraju Orsu, and Suresh B. Mudunuri. "Performance analysis and evaluation of different data mining algorithms used for cancer classification." International Journal of Advanced Research in Artificial Intelligence (IJARAI) 2, no. 5 (2013).
  11. Tiwari, Mahendra, Manu Bhai Jha, and OmPrakash Yadav. "Performance analysis of Data Mining algorithms in WEKA." IOSR Journal of Computer Engineering (IOSRJCE) ISSN : 2278-0661, Vol.6, Iss.3 (2012).
  12. Kaushik H. Raviya, Biren Gajjar "Performance Evaluation of Different Data Mining Classification Algorithm Using WEKA"Vol. 2, Issue. 1. (2013).
  13. Saichanma, Sarawut, Sucha Chulsomlee, Nonthaya Thangrua, Pornsuri Pongsuchart, and Duangmanee Sanmun. "The Observation Report of Red Blood Cell Morphology in Thailand Teenager by Using Data Mining Technique." Advances in hematology (2014).
  14. Bin Othman, Mohd Fauzi, and Thomas Moh Shan Yau. "Comparison of different classification techniques using WEKA for breast cancer." 3rd Kuala Lumpur International Conference on Biomedical Engineering 2006. Springer Berlin Heidelberg, (2007).
  15. Elshami, E. H., and Alhalees, A. M. (2012). Automated Diagnosis of Thalassemia Based on DataMining Classifiers. In International Conference on Informatics and Applications (ICIA2012) (pp. 440-445). Society of Digital Information and Wireless Communication (2012).

Downloads

Published

2018-04-30

Issue

Section

Research Articles

How to Cite

[1]
Paramjeet Kaur, Poonam Rani, " Investigation of Lazy Classification in Data Mining using WEKA tool, IInternational Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 3, Issue 3, pp.1613-1617, March-April-2018.