DocumentCode :
1505613
Title :
Network-Based High Level Data Classification
Author :
Silva, T.C. ; Liang Zhao
Author_Institution :
Dept. of Comput. Sci., Univ. of Sao Paulo, Sao Carlos, Brazil
Volume :
23
Issue :
6
fYear :
2012
fDate :
6/1/2012 12:00:00 AM
Firstpage :
954
Lastpage :
970
Abstract :
Traditional supervised data classification considers only physical features (e.g., distance or similarity) of the input data. Here, this type of learning is called low level classification. On the other hand, the human (animal) brain performs both low and high orders of learning and it has facility in identifying patterns according to the semantic meaning of the input data. Data classification that considers not only physical attributes but also the pattern formation is, here, referred to as high level classification. In this paper, we propose a hybrid classification technique that combines both types of learning. The low level term can be implemented by any classification technique, while the high level term is realized by the extraction of features of the underlying network constructed from the input data. Thus, the former classifies the test instances by their physical features or class topologies, while the latter measures the compliance of the test instances to the pattern formation of the data. Our study shows that the proposed technique not only can realize classification according to the pattern formation, but also is able to improve the performance of traditional classification techniques. Furthermore, as the class configuration´s complexity increases, such as the mixture among different classes, a larger portion of the high level term is required to get correct classification. This feature confirms that the high level classification has a special importance in complex situations of classification. Finally, we show how the proposed technique can be employed in a real-world application, where it is capable of identifying variations and distortions of handwritten digit images. As a result, it supplies an improvement in the overall pattern recognition rate.
Keywords :
computational complexity; learning (artificial intelligence); pattern classification; pattern recognition; class topologies; configuration complexity; handwritten digit images; high level classification; human brain; learning; network-based high level data classification; pattern formation; pattern recognition rate; supervised data classification; test instances; Complex networks; Feature extraction; Pattern formation; Semantics; Support vector machines; Topology; Training; Complex networks; contextual classifier; high level classification; supervised learning;
fLanguage :
English
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
2162-237X
Type :
jour
DOI :
10.1109/TNNLS.2012.2195027
Filename :
6192353
Link To Document :
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