Fitness landscape analysis of weight-elimination neural networks

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Authors

Bosman, Anna Sergeevna
Engelbrecht, Andries P.
Helbig, Marde

Journal Title

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Publisher

Springer

Abstract

Neural network architectures can be regularised by adding a penalty term to the objective function, thus minimising network complexity in addition to the error. However, adding a term to the objective function inevitably changes the surface of the objective function. This study investigates the landscape changes induced by the weight elimination penalty function under various parameter settings. Fitness landscape metrics are used to quantify and visualise the induced landscape changes, as well as to propose sensible ranges for the regularisation parameters. Fitness landscape metrics are shown to be a viable tool for neural network objective function landscape analysis and visualisation.

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Keywords

Neural networks, Fitness landscapes, Regularisation, Weight elimination, Geomorphology, Weight elimination, Parameter setting, Objective functions, Network complexity, Error surface, Continuous optimization problem

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Citation

Bosman, A., Engelbrecht, A. & Helbig, M. Fitness landscape analysis of weight-elimination neural networks. Neural Processing Letters (2018) 48: 353-373. https://doi.org/10.1007/s11063-017-9729-9.