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Imbalanced Learning for Functional State AssessmentThis paper presents results of several imbalanced learning techniques applied to operator functional state assessment where the data is highly imbalanced, i.e., some function states (majority classes) have much more training samples than other states (minority classes). Conventional machine learning techniques usually tend to classify all data samples into majority classes and perform poorly for minority classes. In this study, we implemented five imbalanced learning techniques, including random undersampling, random over-sampling, synthetic minority over-sampling technique (SMOTE), borderline-SMOTE and adaptive synthetic sampling (ADASYN) to solve this problem. Experimental results on a benchmark driving lest dataset show thai accuracies for minority classes could be improved dramatically with a cost of slight performance degradations for majority classes,
Document ID
20110012061
Acquisition Source
Langley Research Center
Document Type
Conference Paper
Authors
Li, Feng
(Old Dominion Univ. Norfolk, VA, United States)
McKenzie, Frederick
(Old Dominion Univ. Norfolk, VA, United States)
Li, Jiang
(Old Dominion Univ. Norfolk, VA, United States)
Zhang, Guangfan
(Intelligent Automation Systems, Inc. Rockville, MD, United States)
Xu, Roger
(Intelligent Automation Systems, Inc. Rockville, MD, United States)
Richey, Carl
(Iowa Univ. Iowa City, IA, United States)
Schnell, Tom
(Iowa Univ. Iowa City, IA, United States)
Date Acquired
August 25, 2013
Publication Date
March 1, 2011
Publication Information
Publication: Selected Papers and Presentations Presented at MODSIM World 2010 Conference Expo
Subject Category
Social And Information Sciences (General)
Report/Patent Number
NNX10CB27C
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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