1. A Penalization Criterion Based on Noise Behaviour for Model Selection
- Author
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Andrés Yañez Escolano, Joaquín Pizarro Junquera, Pedro Galindo Riaño, and Elisa Guerrero Vázquez
- Subjects
Polynomial ,Mathematical optimization ,Artificial neural network ,business.industry ,Computer science ,Model selection ,Univariate ,Overfitting ,Machine learning ,computer.software_genre ,Generalization error ,Noise ,ComputingMethodologies_PATTERNRECOGNITION ,Autoregressive model ,Radial basis function ,Artificial intelligence ,Akaike information criterion ,business ,computer - Abstract
Complexity-penalization strategies are one way to decide on the most appropriate network size in order to address the trade-off between overfitted and underfitted models. In this paper we propose a new penalty term derived from the behaviour of candidate models under noisy conditions that seems to be much more robust against catastrophic overfitting errors that standard techniques. This strategy is applied to several regression problems using polynomial functions, univariate autoregressive models and RBF neural networks. The simulation study at the end of the paper will show that the proposed criterion is extremely competitive when compared to state-of-the-art criteria.
- Published
- 2010
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