Title
OPTIMAL CLASSIFIER MODEL STATUS SELECTION USING BAYES BOUNDARY UNCERTAINTY
Abstract
We propose a method to select the optimal parameter status for any classifier model. In the statistical pattern recognition framework, optimal classification is defined as achieving the minimum classification error probability (Bayes error). Although the error probability is defined on infinite data, in practice only a finite amount of data is available. Using the same finite data for classifier training and evaluation provides a serious underestimate of the Bayes error. Traditional solutions consist in holding out some of the available data for evaluation, which unavoidably decreases the data available for either training or evaluation. By contrast, our proposed method uses the same data for training and evaluation in a single training without splitting, which is made possible by evaluating the ideality of the classifier's classification boundary instead of estimating the error probability. Here, ideal classification boundary (Bayes boundary) refers to the boundary that leads to the Bayes error. We use the fact that the Bayes boundary solely consists of uncertain samples, namely samples whose class posterior probability is equal for the two classes separated by the boundary. Tests on several real-life datasets and experimental comparison to Cross-Validation clearly show the potential of our method.
Year
DOI
Venue
2018
10.1109/MLSP.2018.8516976
2018 IEEE 28th International Workshop on Machine Learning for Signal Processing (MLSP)
Keywords
Field
DocType
Bayes error,model selection,boundary uncertainty
Pattern recognition,Computer science,Model selection,Posterior probability,Artificial intelligence,Probability of error,Classifier (linguistics),Bayes' theorem
Conference
ISSN
ISBN
Citations 
1551-2541
978-1-5386-5478-1
1
PageRank 
References 
Authors
0.48
0
7
Name
Order
Citations
PageRank
David Ha113212.52
Emilie Delattre210.48
Yuya Tomotoshi311.50
Masahiro Senda410.82
Hideyuki Watanabe5378.46
Shigeru Katagiri6850114.01
Miho Ohsaki719528.23