Principles of Risk Minimization for Learning Theory
–Neural Information Processing Systems
Learning is posed as a problem of function estimation, for which two principles ofsolution are considered: empirical risk minimization and structural risk minimization. These two principles are applied to two different statements ofthe function estimation problem: global and local. Systematic improvements in prediction power are illustrated in application to zip-code recognition.
Neural Information Processing Systems
Dec-31-1992