Bayesian neural networks and Gaussian processes in identification of concrete properties

Authors

  • Marek Słoński Institute for Computational Civil Engineering, Cracow University of Technology
    Poland

Keywords:

nonlinear regression, Bayesian methods, concrete, neural network, Gaussian process

Abstract

This paper gives a concise overview of concrete properties prediction using advanced nonlinear regression approach and Bayesian inference. Feed-forward layered neural network (FLNN) with Markov chain Monte Carlo stochastic sampling and Gaussian process (GP) with maximum likelihood hyperparameters estimation are introduced and compared. An empirical assessment of these two models using two benchmark problems are presented. Results on these benchmark datasets show that Bayesian neural networks and Gaussian processes have rather similar prediction accuracy and are superior in comparison to linear regression model.

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Published

2017-01-25

Issue

pp. 291–302

Section

Articles

How to Cite

Słoński, M. (2017). Bayesian neural networks and Gaussian processes in identification of concrete properties. Computer Assisted Methods in Engineering and Science, 18(4), 291–302. https://cames3.ippt.pan.pl/index.php/cames/article/view/108

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