DocumentCode :
1938346
Title :
Optimized diagnostic model combination for improving diagnostic accuracy
Author :
Kunche, S. ; Chen, Ci ; Pecht, Michael G.
Author_Institution :
Center for Adv. Life Cycle Eng., Univ. of Maryland, College Park, MD, USA
fYear :
2013
fDate :
2-9 March 2013
Firstpage :
1
Lastpage :
10
Abstract :
Identifying the most suitable classifier for diagnostics is a challenging task. In addition to using domain expertise, a trial and error method has been widely used to identify the most suitable classifier. Classifier fusion can be used to overcome this challenge and it has been widely known to perform better than single classifier. Classifier fusion helps in overcoming the error due to inductive bias of various classifiers. The combination rule also plays a vital role in classifier fusion, and it has not been well studied which combination rules provide the best performance during classifier fusion. Good combination rules will achieve good generalizability while taking advantage of the diversity of the classifiers. In this work, we develop an approach for ensemble learning consisting of an optimized combination rule. The generalizability has been acknowledged to be a challenge for training a diverse set of classifiers, but it can be achieved by an optimal balance between bias and variance errors using the combination rule in this paper. Generalizability implies the ability of a classifier to learn the underlying model from the training data and to predict the unseen observations. In this paper, cross validation has been employed during performance evaluation of each classifier to get an unbiased performance estimate. An objective function is constructed and optimized based on the performance evaluation to achieve the optimal bias-variance balance. This function can be solved as a constrained nonlinear optimization problem. Sequential Quadratic Programming based optimization with better convergence property has been employed for the optimization. We have demonstrated the applicability of the algorithm by using support vector machine and neural networks as classifiers, but the methodology can be broadly applicable for combining other classifier algorithms as well. The method has been applied to the fault diagnosis of analog circuits. The performance of the proposed - lgorithm has been compared to other combination rules in the literature. It is observed that the proposed combination rule performs better in reducing the number of false positives and false negatives.
Keywords :
analogue circuits; electronic engineering computing; fault diagnosis; neural nets; pattern classification; quadratic programming; support vector machines; analog circuit; classifier fusion; combination rule; constrained nonlinear optimization problem; cross validation; diagnostic accuracy; fault diagnosis; neural network; optimized diagnostic model combination; performance evaluation; sequential quadratic programming; support vector machine; variance error; Classification algorithms; Equations; Linear programming; Optimization; Support vector machines; Training; Training data;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Aerospace Conference, 2013 IEEE
Conference_Location :
Big Sky, MT
ISSN :
1095-323X
Print_ISBN :
978-1-4673-1812-9
Type :
conf
DOI :
10.1109/AERO.2013.6497197
Filename :
6497197
Link To Document :
بازگشت