Title :
A New Multiple Classifiers Combination Algorithm
Author :
Zhang, Jianpei ; Cheng, Lili ; Ma, Jun
Author_Institution :
Coll. of Comput. Sci. & Technol., Harbin Eng. Univ.
Abstract :
Classification has an important role in data mining, but the individual classifier has its limited applicable field, so combining the classified output of multiple classifiers to get much more accuracy is very valuable. There are many combination algorithms such as product, sum, median and vote rules. But these integration algorithms always have not good capability in different datasets. So in this paper a new parallel multiple classifiers combining algorithm, that is maximum of posterior probability average with self-adaptive weight based on output vectors and decision template (MASWOD) is proposed. The experiment on standard UCI dataset show that this algorithm improve the classified accuracy and extend the applicable area of data mining greatly
Keywords :
data mining; parallel algorithms; pattern classification; probability; UCI dataset; data mining; decision template; parallel multiple classifiers combination algorithm; posterior probability; Computer science; Concurrent computing; Data engineering; Data mining; Educational institutions; Face recognition; Handwriting recognition; Robustness; Text recognition; Voting;
Conference_Titel :
Computer and Computational Sciences, 2006. IMSCCS '06. First International Multi-Symposiums on
Conference_Location :
Hanzhou, Zhejiang
Print_ISBN :
0-7695-2581-4
DOI :
10.1109/IMSCCS.2006.155