posted on 2017-06-05, 13:18authored byGreer B. Humphrey, Holger R. Maier, Wenyan Wu, Nick J. Mount, Graeme C. Dandy, Robert J. Abrahart, Christian DawsonChristian Dawson
Validation is a critical component of any modelling process. In artificial neural network (ANN) modelling, validation generally consists of the assessment of model predictive performance on an independent
validation set (predictive validity). However, this ignores other aspects of model validation considered to be good practice in other areas of environmental modelling, such as residual analysis (replicative validity)
and checking the plausibility of the model in relation to a priori system understanding (structural validity). In order to address this shortcoming, a validation framework for ANNs is introduced in this paper that covers all of the above aspects of validation. In addition, the validann R-package is introduced that enables these validation methods to be implemented in a user-friendly and consistent fashion. The benefits of the framework and R-package are demonstrated for two environmental modelling case studies, highlighting the importance of considering replicative and structural validity in addition to predictive validity.
History
School
Science
Department
Computer Science
Published in
Environmental Modelling and Software
Volume
92
Pages
82 - 106
Citation
HUMPHREY, G.B. ...et al., 2017. Improved validation framework and R-package for artificial neural network models. Environmental Modelling and Software, 92, pp. 82-106.
This work is made available according to the conditions of the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0) licence. Full details of this licence are available at: https://creativecommons.org/licenses/by-nc-nd/4.0/
Acceptance date
2017-01-30
Publication date
2017-02-28
Notes
This paper was published in the journal Environmental Modelling and Software and the definitive published version is available at https://doi.org/10.1016/j.envsoft.2017.01.023.