From the Retina to the Neocortex

David Man advocated and exemplified an approach to brain modeling that is based on computational sophistication together with a thorough knowledge of the biological facts. The pioneering papers in this collection demonstrate that a combination of computational analysis and biological constraints can lead to interesting neural algorithms. The recent developments in computational mod- els of neural information processing systems is

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