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Convex Optimization - Boyd & Vanderberghe.pdf

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《Convex Optimization》由Stephen Boyd和Lieven Vandenberghe合著,全面介绍了凸优化理论及其应用,是相关领域学习与研究的经典教材。 Stephen Boyd的《凸优化理论》是优化理论领域的经典之作。

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