Title :
A Novel Adaptive-Boost-Based Strategy for Combining Classifiers Using Diversity Concept
Author :
Golestani, Ali ; Ali Amiri, K.A. ; Jahed Motlagh, Mohammad Reza
Abstract :
In classifiers combination, the diversity rate among classifier´s outputs is one of the most important discussions. There are different methods for combining classifiers. AdaBoost is an incremental method for creating a classifiers ensemble in which every AdaBoost algorithm has a local centrality. It means that classifiers are data biased and classify special data. In this paper we intend to find a new method for combining classifiers by using AdaBoost method and diversity concept. We have checked this method over different data sets and compared results of this method with others. These results indicate that we can develop other versions of this method for achieving a better performance.
Keywords :
data handling; pattern classification; AdaBoost algorithm; adaptive-boost-based strategy; classifier combination; classifier ensemble; data classification; diversity concept; Boosting; Diversity methods; Diversity reception; Error correction; Information science; Testing; Training data;
Conference_Titel :
Computer and Information Science, 2007. ICIS 2007. 6th IEEE/ACIS International Conference on
Conference_Location :
Melbourne, Qld.
Print_ISBN :
0-7695-2841-4
DOI :
10.1109/ICIS.2007.37