Browsing by Author "Mohd Asrul Affendi"
Now showing 1 - 1 of 1
Results Per Page
Sort Options
- ItemEmpirical bayesian binary classification forests using bootstrap prior(Science Publishing Corporation-uthm.edu.my, 2018-11-30) Oyebayo Ridwan Olaniran; Mohd Asrul Affendi; Gopal Pillay, Khuneswar; Saidat Fehintola OlaniranIn this paper, we present a new method called Empirical Bayesian Random Forest (EBRF) for binary classification problem. The prior ingredient for the method was obtained using the bootstrap prior technique. EBRF addresses explicitly low accuracy problem in Random Forest (RF) classifier when the number of relevant input variables is relatively lower compared to the total number of input variables. The improvement was achieved by replacing the arbitrary subsample variable size with empirical Bayesian estimate. An illustration of the proposed, and existing methods was performed using five high-dimensional microarray datasets that emanated from colon, breast, lymphoma and Central Nervous System (CNS) cancer tumors. Results from the data analysis revealed that EBRF provides reasonably higher accuracy, sensitivity, specificity and Area Under Receiver Operating Characteristics Curve (AUC) than RF in most of the datasets used.