Physics – Condensed Matter
Scientific paper
1995-01-18
Physics
Condensed Matter
12 pages, 1 compressed ps figure (uufile), RevTeX file
Scientific paper
10.1103/PhysRevLett.75.2432
We analytically derive the geometrical structure of the weight space in multilayer neural networks (MLN), in terms of the volumes of couplings associated to the internal representations of the training set. Focusing on the parity and committee machines, we deduce their learning and generalization capabilities both reinterpreting some known properties and finding new exact results. The relationship between our approach and information theory as well as the Mitchison--Durbin calculation is established. Our results are exact in the limit of a large number of hidden units, showing that MLN are a class of exactly solvable models with a simple interpretation of replica symmetry breaking.
Monasson Remi
Zecchina Riccardo
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