Home  |   Login  |   Logout  |   Access Information  |   Alerts  |   Purchase History  |   Cart  |   Sitemap  |   Help   
 
CrossRef Search
BROWSE SEARCH IEEE XPLORE GUIDE SUPPORT
You requested this document:
1. Identifying and Correcting Mislabeled Training Instances
Jiang-wen Sun; Feng-ying Zhao; Chong-jun Wang; Shi-fu Chen;
Future generation communication and networking (fgcn 2007)
Volume 1,  6-8 Dec. 2007 Page(s):244 - 250
Abstract:

In order to form a good generalization from a set of training instances, a clean training dataset is important. Unfortunately, real world data is never as perfect as we would like it to be and can often suffered from corruptions. In this paper, a new approach is proposed to identify and correct mislabeled training instances. For a given instance, we employ a Bayesian classifier to evaluate the probabilities of the instance belonging to all considered class labels. Then information entropy calculated from the probability distributions is used to evaluate the typicality of the instance belonging to considered class labels. Finally, the instance with low entropy, but with error prediction result, would be identified as mislabeled instance. Experimental results indicate that our approach gains comparative or better performance than previous techniques.
Abstract | Full Text: PDF(143 KB)    IEEE CNF
 
» Key
IEEE JNL IEEE Journal or Magazine
IEE JNL IEE Journal or Magazine
IEEE CNF IEEE Conference Proceeding
IEE CNF IEE Conference Proceeding
IEEE STD IEEE Standard
 
 
Indexed by IEE Inspec
© Copyright 2008 IEEE – All Rights Reserved