Quantum-inspired feature and parameter optimisation of evolving spiking neural networks with a case study from ecological modeling

Schleibs, S., Defoin-Platel, M., Worner, S. and Kasabov, N. (2010) Quantum-inspired feature and parameter optimisation of evolving spiking neural networks with a case study from ecological modeling. In: UNSPECIFIED.
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The paper introduces a framework and implementation of an integrated connectionist network, where the features and the parameters of an evolving spiking neural network are optimised together using a quantum representation of the features and a quantum inspired evolutionary algorithm for optimisation. The proposed model is applied on ecological data modeling problem demonstrating a significantly better classification accuracy than traditional neural network approaches and a more appropriate feature subset selected from a larger initial number of features. Results are compared to a Naive Bayesian Classifier.


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