title: Artificial neural networks as models of stimulus control creator: Ghirlanda, Stefano creator: Enquist, Magnus subject: Ethology subject: Computational Neuroscience subject: Neural Nets subject: Animal Behavior description: We evaluate the ability of artificial neural network models (multi-layer perceptrons) to predict stimulus-­response relationships. A variety of empirical results are considered, such as generalization, peak-shift (supernormality) and stimulus intensity effects. The networks were trained on the same tasks as the animals in the considered experiments. The subsequent generalization tests on the networks showed that the model replicates correctly the empirical results. It is concluded that these models are valuable tools in the study of animal behaviour. date: 1998 type: Journal (Paginated) type: PeerReviewed format: application/pdf identifier: http://cogprints.org/5271/1/ghirlanda_enquist1998.pdf identifier: Ghirlanda, Stefano and Enquist, Magnus (1998) Artificial neural networks as models of stimulus control. [Journal (Paginated)] relation: http://cogprints.org/5271/