A Comparative Analysis of the Performance of Multiple Data Mining Classification Approaches Using the Kn Fold Validation

D. K. Girija *

MUIT, Lucknow, India.

Manish Varshney

MUIT, Lucknow, India.

*Author to whom correspondence should be addressed.


Abstract

In Healthcare the data is very large and sensitive. The data is mandatory to be handled very carefully without any negligence. A variety of data mining categorization approaches have been employed in the healthcare industry to assess the quality of services. On the basis of 150 patients' records, this study provides and evaluates the experience of implementing various data mining methodologies and procedures. Using data mining techniques, a new method for determining a product's correctness has emerged. The evaluation of performance on data mining classification by using a different algorithms like Decision Tree, Naïve Bayes, KNN, Radom Tree Set and Rule Model. Finally we tend to aim to contemplate the performance analysis of accuracy, sensitivity and specificity proportion to produce a result.

Keywords: Healthcare, data mining, classification, fibroid data set, performance analysis, rapid miner


How to Cite

Girija, D. K. and Varshney, M. (2022) “A Comparative Analysis of the Performance of Multiple Data Mining Classification Approaches Using the Kn Fold Validation”, Journal of Pharmaceutical Research International, 34(11B), pp. 25–32. doi: 10.9734/jpri/2022/v34i11B35542.