SELECTING NEURAL NETWORKS FOR A COMMITTEE DECISION

Author:

VERIKAS ANTANAS1,LIPNICKAS ARUNAS2,MALMQVIST KERSTIN1

Affiliation:

1. Intelligent Systems Laboratory, Halmstad University, Box 823, Halmstad, S-30118, Sweden

2. Department of Applied Electronics, Kaunas University of Technology, Kaunas, 3031, Lithuania

Abstract

To improve recognition results, decisions of multiple neural networks can be aggregated into a committee decision. In contrast to the ordinary approach of utilizing all neural networks available to make a committee decision, we propose creating adaptive committees, which are specific for each input data point. A prediction network is used to identify classification neural networks to be fused for making a committee decision about a given input data point. The jth output value of the prediction network expresses the expectation level that the jth classification neural network will make a correct decision about the class label of a given input data point. The proposed technique is tested in three aggregation schemes, namely majority vote, averaging, and aggregation by the median rule and compared with the ordinary neural networks fusion approach. The effectiveness of the approach is demonstrated on two artificial and three real data sets.

Publisher

World Scientific Pub Co Pte Lt

Subject

Computer Networks and Communications,General Medicine

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