DocumentCode
2705282
Title
An approach to incremental SVM learning algorithm
Author
Xiao, Rong ; Wang, Jicheng ; Zhang, Fuyan
Author_Institution
State Key Lab. for Novel Software Technol., Nanjing Univ., China
fYear
2000
fDate
2000
Firstpage
268
Lastpage
273
Abstract
The classification algorithm that is based on a support vector machine (SVM) is now attracting more attention, due to its perfect theoretical properties and good empirical results. In this paper, we first analyze the properties of the support vector (SV) set thoroughly, then introduce a new learning method, which extends the SVM classification algorithm to the incremental learning area. The theoretical basis of this algorithm is the classification equivalence of the SV set and the training set. In this algorithm, knowledge is accumulated in the process of incremental learning. In addition, unimportant samples are discarded optimally by a least-recently used (LRU) scheme. Theoretical analyses and experimental results showed that this algorithm could not only speed up the training process, but it could also reduce the storage costs, while the classification precision is also guaranteed
Keywords
learning (artificial intelligence); learning automata; pattern classification; classification algorithm; classification equivalence; classification precision; incremental learning algorithm; knowledge accumulation; least-recently used scheme; optimal unimportant sample discarding; storage costs; support vector machine; support vector set properties; training process speed; training set; Algorithm design and analysis; Classification algorithms; Costs; Laboratories; Learning systems; Neural networks; Pattern recognition; Software algorithms; Support vector machine classification; Support vector machines;
fLanguage
English
Publisher
ieee
Conference_Titel
Tools with Artificial Intelligence, 2000. ICTAI 2000. Proceedings. 12th IEEE International Conference on
Conference_Location
Vancouver, BC
ISSN
1082-3409
Print_ISBN
0-7695-0909-6
Type
conf
DOI
10.1109/TAI.2000.889881
Filename
889881
Link To Document