Title
A Learning Generalization Bound with an Application to Sparse-Representation Classifiers
Abstract
A classifier is said to have good generalization ability if it performs on test data almost as well as it does on the training data. The main result of this paper provides a sufficient condition for a learning algorithm to have good finite sample generalization ability. This criterion applies in some cases where the set of all possible classifiers has infinite VC dimension. The result is applied to prove the good generalization ability of support vector machines by a exploiting a sparse-representation property.
Year
DOI
Venue
2001
10.1023/A:1007605716762
Machine Learning
Keywords
Field
DocType
generalization ability,sparsity,support vector machines,VC dimension,perceptron algorithm
VC dimension,Learning Generalization,Pattern recognition,Support vector machine,Sparse approximation,Artificial intelligence,Test data,Classifier (linguistics),Margin classifier,Perceptron,Machine learning,Mathematics
Journal
Volume
Issue
ISSN
42
3
1573-0565
Citations 
PageRank 
References 
2
0.43
2
Authors
1
Name
Order
Citations
PageRank
Yoram Gat1152.41