Publication | Closed Access
Learning and making decisions when costs and probabilities are both unknown
451
Citations
14
References
2001
Year
Unknown Venue
EngineeringMachine LearningBehavioral Decision MakingGame TheoryDecision AnalysisCost EstimatorsBayesian InferenceData ScienceData MiningClass ImbalanceDeep UncertaintyProbability EstimatorsManagementProbabilistic ReasoningDecision TheoryStatisticsSupervised LearningClass Membership ProbabilitiesCognitive SciencePredictive AnalyticsKnowledge DiscoverySequential Decision MakingComputer ScienceStatistical Learning TheoryInteractive Decision MakingStatistical InferenceDecision Science
In many data mining domains, misclassification costs are different for different examples, in the same way that class membership probabilities are example-dependent. In these domains, both costs and probabilities are unknown for test examples, so both cost estimators and probability estimators must be learned. After discussing how to make optimal decisions given cost and probability estimates, we present decision tree and naive Bayesian learning methods for obtaining well-calibrated probability estimates. We then explain how to obtain unbiased estimators for example-dependent costs, taking into account the difficulty that in general, probabilities and costs are not independent random variables, and the training examples for which costs are known are not representative of all examples. The latter problem is called sample selection bias in econometrics. Our solution to it is based on Nobel prize-winning work due to the economist James Heckman. We show that the methods we propose perform better than MetaCost and all other known methods, in a comprehensive experimental comparison that uses the well-known, large, and challenging dataset from the KDD'98 data mining contest.
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