Abstract
Neural networks for estimating conditional distributions and their associated quantiles are investigated in this paper. A basic network structure is developed on the basis of kernel estimation theory, and consistency is proved from a mild set of assumptions. A number of applications within statistcs, decision theory and signal processing are suggested, and a numerical example illustrating the capabilities of the elaborated network is given
Originalsprog | Dansk |
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Udgiver | <Forlag uden navn> |
Status | Udgivet - 1997 |