148-2011: Conditional Classes and Pattern Recognition in SAS®
نویسنده
چکیده
Conditional classes are data objects that do not have tidy rules of membership. Their characteristics make up, more or less, the possibilities of membership rather than probabilities. How one thinks about conditional classes is critical. Complexities of pattern recognition, an area that has received strong practical implementation in SAS, will serve to illustrate questions of assignment, data ambiguity, and data objects that do not have precise relation and certain membership.
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