DocumentCode
3416947
Title
Dynamic combination of multiple classifiers based on central similarity
Author
Wang, Hui ; Liu, Binghan
Author_Institution
Coll. of Math. & Comput. Sci., Fuzhou Univ., Fuzhou, China
fYear
2011
fDate
19-21 Oct. 2011
Firstpage
219
Lastpage
223
Abstract
According to the specific characteristics of samples, dynamic classifier ensemble chooses appropriate classifier for decision-making, which improve classification accuracy effectively, but increase the cost of running time. Therefore, Dynamic Combination of Multiple Classifiers Based on Central Similarity is proposed in this paper, which chooses different members classifier according to the similarity between classification samples and each class center to avoid validation process of neighborhood samples, and at the same time, adjust each corresponding weights to improve accuracy furthermore. The experiments demonstrate that this algorithm reduces the running time as well as improve the accuracy of integration classification, besides, choice of classifiers don´t depend on neighborhood samples any more, so it shows a higher accuracy of classification for small scale sample training set.
Keywords
decision making; pattern classification; central similarity; classification samples; decision making; dynamic multiple classifiers combination; integration classification accuracy improvement; neighborhood samples; running time reduction; small scale sample training set; Accuracy; Classification algorithms; Euclidean distance; Glass; Heuristic algorithms; Training;
fLanguage
English
Publisher
ieee
Conference_Titel
Advanced Computational Intelligence (IWACI), 2011 Fourth International Workshop on
Conference_Location
Wuhan
Print_ISBN
978-1-61284-374-2
Type
conf
DOI
10.1109/IWACI.2011.6160006
Filename
6160006
Link To Document