Title :
Learning by canonical smooth estimation. I. Simultaneous estimation
Author :
Buescher, Kevin L. ; Kumar, P.R.
Author_Institution :
Los Alamos Nat. Lab., NM, USA
fDate :
4/1/1996 12:00:00 AM
Abstract :
This paper examines the problem of learning from examples in a framework that is based on, but more general than, Valiant´s probably approximately correct (PAC) model for learning. In our framework, the learner observes examples that consist of sample points drawn and labeled according to a fixed, unknown probability distribution. Based on this empirical data, the learner must select, from a set of candidate functions, a particular function or “hypothesis” that will accurately predict the labels of future sample points. The expected mismatch between a hypothesis prediction and the label of a new sample point is called the hypothesis “generalization error”. Following the pioneering work of Vapnik and Chervonenkis, others have attacked this sort of learning problem by finding hypotheses that minimize the relative frequency-based empirical error estimate. We generalize this approach by examining the “simultaneous estimation” problem. We demonstrate how one can learn from such a simultaneous error estimate and propose a new class of estimators called “smooth estimators”. We characterize the class of simultaneous estimation problems solvable by a smooth estimator
Keywords :
error analysis; estimation theory; learning by example; minimisation; probability; canonical smooth estimation; error estimate; learning from examples; probability distribution; probably approximately correct model; simultaneous estimation; smooth estimators; Actuators; Frequency estimation; Laboratories; Particle measurements; Probability distribution; Q measurement;
Journal_Title :
Automatic Control, IEEE Transactions on