Knowledge Fusion for Probabilistic Generative Classifiers with Data Mining Applications
Rs3,000.00
10000 in stock
SupportDescription
This paper presents a novel cluster-oriented ensemble classifier. The proposed ensemble classifier is based on original concepts such as learning of cluster boundaries by the base classifiers and mapping of cluster confidences to class decision using a fusion classifier. The categorized data set is characterized into multiple clusters and fed to a number of distinctive base classifiers. The base classifiers learn cluster boundaries and produce cluster confidence vectors. A second level fusion classifier combines the cluster confidences and maps to class decisions. The proposed ensemble classifier modifies the learning domain for the base classifiers and facilitates efficient learning. To find the optimal number of cluster using Ensemble classifier .
Only logged in customers who have purchased this product may leave a review.
Reviews
There are no reviews yet.