A Bayesian recurrent neural network for unsupervised pattern recognition in large incomplete data sets

Abstract

A recurrent neural network, modified to handle highly incomplete training data is described. Unsupervised pattern recognition is demonstrated in the WHO database of adverse drug reactions. Comparison is made to a well established method, AutoClass, and the performances of both methods is investigated on simulated data. The neural network method performs comparably to AutoClass in simulated data, and better than AutoClass in real world data. With its better scaling properties, the neural network is a promising tool for unsupervised pattern recognition in huge databases of incomplete observations.


A Bayesian recurrent neural network for unsupervised pattern recognition in large incomplete data sets
International Journal of Neural Systems, 15(3):207-222, June 2005.
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Roland Orre
Last modified: Fri Oct 31 09:59:30 CET 2005