This invention is a method of training a mean-field Bayesian data
reduction algorithm (BDRA) based classifier which includes using an
initial training for determining the best number of levels. The
Mean-Field BDRA is then retrained for each point in a target data set and
training errors are calculated for each training operation. Cluster
candidates are identified as those with multiple points having a common
training error. Utilizing these cluster candidates and previously
identified clusters as the identified target data, the clusters can be
confirmed by comparing a newly calculated training error with the
previously calculated common training error for the cluster. The method
can be repeated until all cluster candidates are identified and tested.