Neural Networks for Predicting Conditional Probability Densities: Improved Training Scheme Combining EM and RVFL

 HUSMEIER Dirk
 Department of Mathematics, King's College London

 TAYLOR John G.
 Department of Mathematics, King's College London
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Author(s)

 HUSMEIER Dirk
 Department of Mathematics, King's College London

 TAYLOR John G.
 Department of Mathematics, King's College London
Journal

 Neural networks : the official journal of the International Neural Network Society

Neural networks : the official journal of the International Neural Network Society 11(1), 89116, 19980101
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