A technique for classifying small collections of high-value entities with
missing data. The invention includes: collecting measurement variables
for a set of entity cases for which classifications are known;
calibrating standard weights for each measurement variable based on
historical data; computing compensating weights for each entity case that
has missing data, computing case scores for each of one or more
dimensions as a sum-product of compensating weights and variables
associated with each dimension; executing an iterative process that finds
a specific combination of compensation weights that best classify the
entity cases in terms of distinct scores; and applying a resulting model,
which is determined by the specific combination of compensation weights,
to classify other entity cases for which the classifications are unknown.