DocumentCode :
1754015
Title :
Decompose Learning: Combine Feature Extraction and Classification
Author :
Yang, Yang ; Li, Shanping
Author_Institution :
Dept. of Comput. Sci., Zhejiang Univ., Hangzhou, China
Volume :
1
fYear :
2011
fDate :
28-29 March 2011
Firstpage :
93
Lastpage :
98
Abstract :
In real world classification tasks, the original instances are represented by raw features. Usually domain related algorithms are needed to extract discriminative features. But the algorithms selection and additional parameters tuning are difficult for people with little domain knowledge and experience. In this paper, a new machine learning framework called "decompose learning" is proposed for classification tasks with raw features. The raw input space is decomposed into several subspaces and an independent base classifier is learned in each subspace. The predictive result of each base classifier can be regarded as a high-level feature of original task. The final classifier is learned on these high-level features. We model the decomposition as a "subspace clustering" problem and utilize target unrelated unlabeled data to extract target related subspaces. Besides that, we use a maximum margin base classifier selection strategy to do the capacity control. Empirical tests on MNIST and Caltech101 datasets show that decompose learning can improve predictive accuracy considerably without highly specialized domain related feature extraction algorithms.
Keywords :
feature extraction; learning (artificial intelligence); pattern classification; base classifier; decompose learning; discriminative feature extraction; feature classification; machine learning framework; subspace clustering problem; Accuracy; Algorithm design and analysis; Animals; Feature extraction; Pixel; Training; Training data; Classification; Feature Extraction; Model Selection; SVM;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Intelligent Computation Technology and Automation (ICICTA), 2011 International Conference on
Conference_Location :
Shenzhen, Guangdong
Print_ISBN :
978-1-61284-289-9
Type :
conf
DOI :
10.1109/ICICTA.2011.30
Filename :
5750564
Link To Document :
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