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Statistical classification / Computational learning theory / Machine learning / Linear algebra / Empirical process / VC dimension / Support vector machine / Structural risk minimization / Shattered set / Statistics / Algebra / Mathematics
Date: 2004-12-10 16:10:53
Statistical classification
Computational learning theory
Machine learning
Linear algebra
Empirical process
VC dimension
Support vector machine
Structural risk minimization
Shattered set
Statistics
Algebra
Mathematics

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