The Emergence of Structured Receptive Fields in a Constructive Neural Network Model
نویسندگان
چکیده
Acknowledgements I would like to thank David Willshaw for his continuous advice and encouragement, and for his helpful comments on earlier drafts of this manuscript. I would also like to thank Gert`D.' Westermann and Sam Joseph for many interesting discussions and critical comments.
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