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Mathematical analysis / Mathematics / Analysis / Convex analysis / Linear algebra / Operator theory / Functions and mappings / Convex function / Mean value theorem / Hilbert space / Derivative / Norm
Date: 1999-09-11 01:00:00
Mathematical analysis
Mathematics
Analysis
Convex analysis
Linear algebra
Operator theory
Functions and mappings
Convex function
Mean value theorem
Hilbert space
Derivative
Norm

Chapter VII Optimization and Approximation Topics 1

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