Combining multiple classifiers by averaging or by multiplying?

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In classification tasks it may be wise to combine observations from different sources. Not only it decreases the training time but it can also increase the robustness and the performance of the classification. Combining is often done by just (weighted) averaging of the outputs of the different classifiers. Using equal weights for all classifiers then results in the mean combination rule. This works very well in practice, but the combination strategy lacks a fundamental basis as it cannot readily be derived from the joint probabilities. This contrasts with the product combination rule which can be obtained from the joint probability under the assumption of independency. In this paper we will show differences and similarities between this mean combination rule and the product combination rule in theory and in practice.

论文关键词:Combination of classifiers,Classifier fusion,Neural networks,Handwritten digits recognition,Pattern recognition

论文评审过程:Received 25 January 1999, Revised 1 June 1999, Accepted 1 June 1999, Available online 7 June 2001.

论文官网地址:https://doi.org/10.1016/S0031-3203(99)00138-7