Title of article :
A comparative review of regression ensembles on drug design datasets
Author/Authors :
AMASYAL, Mehmet Fatih Yildiz Technical University - Computer Engineering Department, Turkey , ERSOY, Okan Purdue University - School of Electrical and Computer Engineering, USA
From page :
586
To page :
602
Abstract :
Drug design datasets are usually known as hard-modeled, having a large number of features and a small number of samples. Regression types of problems are common in the drug design area. Committee machines (ensembles) have become popular in machine learning because of their good performance. In this study, the dynamics of ensembles used in regression-related drug design problems are investigated with a drug design dataset collection. The study tries to determine the most successful ensemble algorithm, the base algorithm--ensemble pair having the best/worst results, the best successful single algorithm, and the similarities of algorithms according to their performances. We also discuss whether ensembles always generate better results than single algorithms.
Keywords :
Drug design datasets , ensemble algorithms , regression , regression ensembles
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences
Record number :
2532458
Link To Document :
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