Abstract:
Previous developments in conditional density estimation have used neural nets to estimate statistics of the distribution or the marginal or joint distributions of the inp...Show MoreMetadata
Abstract:
Previous developments in conditional density estimation have used neural nets to estimate statistics of the distribution or the marginal or joint distributions of the input-output variables. We modify the joint distribution estimating sigmoidal neural network to estimate the conditional distribution. Thus, the probability density of the output conditioned on the inputs is estimated using a neural network. We derive and implement the learning laws to train the network. We show that this network has computational advantages over a brute force ratio of joint and marginal distributions. We also compare its performance to a kernel conditional density estimator in a larger scale (higher dimensional) problem simulating more realistic conditions.
Published in: IEEE Transactions on Neural Networks ( Volume: 10, Issue: 2, March 1999)
DOI: 10.1109/72.750544