DocumentCode :
589221
Title :
Deep Structure Learning: Beyond Connectionist Approaches
Author :
Mitchell, Bernhard ; Sheppard, John
Author_Institution :
Dept. of Comput. Sci., Johns Hopkins Univ., Baltimore, MD, USA
Volume :
1
fYear :
2012
fDate :
12-15 Dec. 2012
Firstpage :
162
Lastpage :
167
Abstract :
Deep structure learning is a promising new area of work in the field of machine learning. Previous work in this area has shown impressive performance, but all of it has used connectionist models. We hope to demonstrate that the utility of deep architectures is not restricted to connectionist models. Our approach is to use simple, non-connectionist dimensionality reduction techniques in conjunction with a deep architecture to examine more precisely the impact of the deep architecture itself. To do this, we use standard PCA as a baseline and compare it with a deep architecture using PCA. We perform several image classification experiments using the features generated by the two techniques, and we conclude that the deep architecture leads to improved classification performance, supporting the deep structure hypothesis.
Keywords :
data structures; learning (artificial intelligence); principal component analysis; PCA; connectionist approach; deep architecture; deep structure hypothesis; deep structure learning; image classification experiment; machine learning; nonconnectionist dimensionality reduction; Accuracy; Computer architecture; Feature extraction; Principal component analysis; Standards; Support vector machines; Vectors; deep architecture; deep learning; feature extraction; image classification; object recognition;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Machine Learning and Applications (ICMLA), 2012 11th International Conference on
Conference_Location :
Boca Raton, FL
Print_ISBN :
978-1-4673-4651-1
Type :
conf
DOI :
10.1109/ICMLA.2012.34
Filename :
6406606
Link To Document :
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