INEB
INEB
TitleOn combining classifiers using sum and product rules
Publication TypeJournal Article
2001
AuthorsAlexandre, LA, Campilho, AC, Kamel, M
JournalPattern Recognition LettersPattern Recogn. Lett.
Volume22
Issue12
Pagination1283 - 1289
Date Published2001///
01678655 (ISSN)
artificial neural network, Classification, Classifier fusion, Combinatorial mathematics, Combining classifiers, Equivalence classes, Estimation, K nearest-neighbours, Multiple classifiers, Neural networks, Pattern recognition, probability
This paper presents a comparative study of the performance of arithmetic and geometric means as rules to combine multiple classifiers. For problems with two classes, we prove that these combination rules are equivalent when using two classifiers and the sum of the estimates of the a posteriori probabilities is equal to one. We also prove that the case of a two class problem and a combination of two classifiers is the only one where such equivalence occurs. We present experiments illustrating the equivalence of the rules under the above mentioned assumptions. © 2001 Elsevier Science B.V. All rights reserved.
http://www.scopus.com/inward/record.url?eid=2-s2.0-0034875843&partnerID=40&md5=becfe9c0c4a7d97f7bbaf33f3059ef8f