Title :
Quantifying accuracy of learning via sample width
Author :
Anthony, Martin ; Ratsaby, Joel
Author_Institution :
Dept. of Math., London Sch. of Econ., London, UK
Abstract :
In a recent paper, the authors introduced the notion of sample width for binary classifiers defined on the set of real numbers. It was shown that the performance of such classifiers could be quantified in terms of this sample width. This paper considers how to adapt the idea of sample width so that it can be applied in cases where the classifiers are defined on some finite metric space. We discuss how to employ a greedy set-covering heuristic to bound generalization error. Then, by relating the learning problem to one involving certain graph-theoretic parameters, we obtain generalization error bounds that depend on the sample width and on measures of `density´ of the underlying metric space.
Keywords :
graph theory; greedy algorithms; learning (artificial intelligence); pattern classification; binary classifiers; finite metric space; generalization error bounds; graph-theoretic parameters; greedy set-covering heuristic; learning problem; sample width; Accuracy; Computational intelligence; Extraterrestrial measurements; Measurement uncertainty; Training; Vectors;
Conference_Titel :
Foundations of Computational Intelligence (FOCI), 2013 IEEE Symposium on
Conference_Location :
Singapore
DOI :
10.1109/FOCI.2013.6602459