[PDF.48kg] Interior-Point Polynomial Algorithms in Convex Programming (Studies in Applied and Numerical Mathematics)
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Interior-Point Polynomial Algorithms in Convex Programming (Studies in Applied and Numerical Mathematics)
Yurii Nesterov, Arkadii Nemirovskii
[PDF.uc94] Interior-Point Polynomial Algorithms in Convex Programming (Studies in Applied and Numerical Mathematics)
Interior-Point Polynomial Algorithms in Yurii Nesterov, Arkadii Nemirovskii epub Interior-Point Polynomial Algorithms in Yurii Nesterov, Arkadii Nemirovskii pdf download Interior-Point Polynomial Algorithms in Yurii Nesterov, Arkadii Nemirovskii pdf file Interior-Point Polynomial Algorithms in Yurii Nesterov, Arkadii Nemirovskii audiobook Interior-Point Polynomial Algorithms in Yurii Nesterov, Arkadii Nemirovskii book review Interior-Point Polynomial Algorithms in Yurii Nesterov, Arkadii Nemirovskii summary
| #4793281 in Books | 1995-07 | Original language:English | 8.98 x.98 x5.98l,1.90 | File type: PDF | 405 pages|||"...the single most important contribution to the literature on optimization in the last decade." -- Aharon Ben-Tal, Professor of Operations Research, Technion-Israel Institute of Technology
"This is an outstanding book, a landmark in the s
Written for specialists working in optimization, mathematical programming, or control theory. The general theory of path-following and potential reduction interior point polynomial time methods, interior point methods, interior point methods for linear and quadratic programming, polynomial time methods for nonlinear convex programming, efficient computation methods for control problems and variational inequalities, and acceleration of path-following methods are covered. ...
You can specify the type of files you want, for your gadget.Interior-Point Polynomial Algorithms in Convex Programming (Studies in Applied and Numerical Mathematics) | Yurii Nesterov, Arkadii Nemirovskii. I have read it a couple of times and even shared with my family members. Really good. Couldnt put it down.