DocumentCode :
1197552
Title :
Ensemble based systems in decision making
Author :
Polikar, Robi
Volume :
6
Issue :
3
fYear :
2006
Firstpage :
21
Lastpage :
45
Abstract :
In matters of great importance that have financial, medical, social, or other implications, we often seek a second opinion before making a decision, sometimes a third, and sometimes many more. In doing so, we weigh the individual opinions, and combine them through some thought process to reach a final decision that is presumably the most informed one. The process of consulting "several experts" before making a final decision is perhaps second nature to us; yet, the extensive benefits of such a process in automated decision making applications have only recently been discovered by computational intelligence community. Also known under various other names, such as multiple classifier systems, committee of classifiers, or mixture of experts, ensemble based systems have shown to produce favorable results compared to those of single-expert systems for a broad range of applications and under a variety of scenarios. Design, implementation and application of such systems are the main topics of this article. Specifically, this paper reviews conditions under which ensemble based systems may be more beneficial than their single classifier counterparts, algorithms for generating individual components of the ensemble systems, and various procedures through which the individual classifiers can be combined. We discuss popular ensemble based algorithms, such as bagging, boosting, AdaBoost, stacked generalization, and hierarchical mixture of experts; as well as commonly used combination rules, including algebraic combination of outputs, voting based techniques, behavior knowledge space, and decision templates. Finally, we look at current and future research directions for novel applications of ensemble systems. Such applications include incremental learning, data fusion, feature selection, learning with missing features, confidence estimation, and error correcting output codes; all areas in which ensemble systems have shown great promise
Keywords :
decision making; decision support systems; error correction codes; expert systems; learning (artificial intelligence); learning systems; pattern classification; reviews; sensor fusion; AdaBoost; automated decision making; bagging; behavior knowledge space; boosting; confidence estimation; data fusion; decision templates; ensemble based systems; error correcting output codes; feature selection; incremental learning; multiple classifier systems; single-expert systems; stacked generalization; voting based techniques; Bagging; Boosting; Computational intelligence; Decision making; Error correction codes; Estimation error; Game theory; TV; Telephony; Voting;
fLanguage :
English
Journal_Title :
Circuits and Systems Magazine, IEEE
Publisher :
ieee
ISSN :
1531-636X
Type :
jour
DOI :
10.1109/MCAS.2006.1688199
Filename :
1688199
Link To Document :
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