Mixture Density Network Estimation of Continuous Variable Maximum
Likelihood Using Discrete Training Samples
Abstract
Mixture Density Networks (MDNs) can be used to generate probability density functions of model parameters given a set of observables . In some applications, training data are available only for discrete values of a continuous parameter . In such situations a number of performance-limiting issues arise which can result in biased estimates. We demonstrate the usage of MDNs for parameter estimation, discuss the origins of the biases, and propose a corrective method for each issue.
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