DocumentCode :
3450860
Title :
An algorithmic theory of learning: robust concepts and random projection
Author :
Arriaga, Rosa I. ; Vempala, Santosh
Author_Institution :
Dept. of Psychol., Harvard Univ., Boston, MA, USA
fYear :
1999
fDate :
1999
Firstpage :
616
Lastpage :
623
Abstract :
We study the phenomenon of cognitive learning from an algorithmic standpoint. How does the brain effectively learn concepts from a small number of examples despite the fact that each example contains a huge amount of information? We provide a novel analysis for a model of robust concept learning (closely related to “margin classifiers”), and show that a relatively small number of examples are sufficient to learn rich concept classes (including threshold functions, Boolean formulae and polynomial surfaces). As a result, we obtain simple intuitive proofs for the generalization bounds of Support Vector Machines. In addition, the new algorithm has several advantages-they are faster conceptually simpler and highly resistant to noise. For example, a robust half-space can be PAC-learned in linear time using only a constant number of training examples, regardless of the number of attributes. A general (algorithmic) consequence of the model, that “more robust concepts are easier to learn”, is supported by a multitude of psychological studies
Keywords :
Boolean functions; cognitive systems; learning (artificial intelligence); Boolean formulae; algorithmic theory of learning; cognitive learning; intuitive proofs; polynomial surfaces; psychological studies; random projection; robust concepts; threshold functions; Animals; Cognition; Ear; Mathematics; Polynomials; Psychology; Read only memory; Robustness; Support vector machines;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Foundations of Computer Science, 1999. 40th Annual Symposium on
Conference_Location :
New York City, NY
ISSN :
0272-5428
Print_ISBN :
0-7695-0409-4
Type :
conf
DOI :
10.1109/SFFCS.1999.814637
Filename :
814637
Link To Document :
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