Bayesian Transduction
Graepel, Thore, Herbrich, Ralf, Obermayer, Klaus
–Neural Information Processing Systems
Transduction is an inference principle that takes a training sample andaims at estimating the values of a function at given points contained in the so-called working sample as opposed to the whole of input space for induction. Transduction provides a confidence measure on single predictions rather than classifiers - a feature particularly important for risk-sensitive applications. The possibly infinite number of functions is reduced to a finite number of equivalence classeson the working sample. A rigorous Bayesian analysis reveals that for standard classification loss we cannot benefit from considering more than one test point at a time. The probability of the label of a given test point is determined as the posterior measure of the corresponding subset of hypothesis space.
Neural Information Processing Systems
Dec-31-2000