
doi: 10.1007/11508069_44
handle: 21.11116/0000-0004-D32E-B
The elastic net and related algorithms, such as generative topographic mapping, are key methods for discretized dimension-reduction problems. At their heart are priors that specify the expected topological and geometric properties of the maps. However, up to now, only a very small subset of possible priors has been considered. Here we study a much more general family originating from discrete, high-order derivative operators. We show theoretically that the form of the discrete approximation to the derivative used has a crucial influence on the resulting map. Using a new and more powerful iterative elastic net algorithm, we confirm these results empirically, and illustrate how different priors affect the form of simulated ocular dominance columns.
E1, 780101 Mathematical sciences, 239901 Biological Mathematics, Cortical Maps
E1, 780101 Mathematical sciences, 239901 Biological Mathematics, Cortical Maps
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