Method and apparatus for incorporating decision making into classifiers

作者: Bradley C. Love

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摘要: A method and a system are presented, which assist classifiers in gathering information cost-effective manner by determining piece of information, if any, to gather next. The includes an explicit system, implicit classifier, profit module. feature set is inputted into the uses determine tests perform useful for classifying state. relative each test performed determined module used or select particular set. results generally exhaustive semi-exhaustive search algorithm, train system. then able process decisions much faster than when circumstances require time-critical operation.

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