Most automatic particle classification methods produce errors. The
invention provides a method for improving the accuracy of particle
classification while shortening the amount of manual review time required
from the operator. The method uses class weights, which are
statistically-derived correction factors that accounts for frequency of
classification errors. A first class weight and a second class weight are
assigned to the first class and the second class, respectively. The
number of particles in each of the first and the second classes is
multiplied by the first class weight and the second class weight,
respectively, to generate a corrected number of particles in each of the
classes. If particles are reclassified, the class weights are
recalculated in response to the reclassification. The method is usable
with a complete classification where all the particles in a sample are
classified, or a selective classification of a subset of the particles in
the sample.