Algebraic Information Geometry for Learning Machines with Singularities
–Neural Information Processing Systems
Algebraic geometry is essential to learning theory. In hierarchical learning machines such as layered neural networks and gaussian mixtures, the asymptotic normality does not hold, since Fisher information matricesare singular. In this paper, the rigorous asymptotic form of the stochastic complexity is clarified based on resolution of singularities and two different problems are studied.
Neural Information Processing Systems
Dec-31-2001
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