Support vector machines versus artificial neural networks for wood dielectric loss factor estimation

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Abstract

This research effort aims in the estimation of Wood Loss Factor by employing Support Vector Machines. For this purpose experimental data for two different wood species were used. The estimation of the dielectric properties of wood was done by using various Kernel algorithms as a function of both ambient electro-thermal conditions applied during drying of wood and basic wood chemistry. Actually the best fit neural models that were developed in a previous effort of our research team were compared to the Kernels' approaches in order to determine the optimal ones. © 2011 International Federation for Information Processing.

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Iliadis, L., Tachos, S., Avramidis, S., & Mansfield, S. (2011). Support vector machines versus artificial neural networks for wood dielectric loss factor estimation. In IFIP Advances in Information and Communication Technology (Vol. 363 AICT, pp. 140–149). https://doi.org/10.1007/978-3-642-23957-1_16

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