Instance-Specific Bayesian Model Averaging for Classification
Visweswaran, Shyam, Cooper, Gregory F.
–Neural Information Processing Systems
Classification algorithms typically induce population-wide models that are trained to perform well on average on expected future instances. We introduce a Bayesian framework for learning instance-specific models from data that are optimized to predict well for a particular instance. Based on this framework, we present a lazy instance-specific algorithm called ISA that performs selective model averaging over a restricted class of Bayesian networks. On experimental evaluation, this algorithm shows superior performance over model selection. We intend to apply such instance-specific algorithms to improve the performance of patient-specific predictive models induced from medical data.
Neural Information Processing Systems
Dec-31-2005
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