凸规划中的内点多项式算法

Y. Nesterov, A. Nemirovski
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引用次数: 3882

摘要

专为优化、数学规划或控制理论方面的专家而写。路径跟踪和降势的一般理论内点多项式时间方法,内点方法,线性和二次规划的内点方法,非线性凸规划的多项式时间方法,控制问题和变分不等式的有效计算方法,以及路径跟踪方法的加速。在这本书中,作者描述了多项式时间内点方法的第一个统一理论。他们的方法提供了一个简单而优雅的框架,其中所有已知的多项式时间内点方法都可以解释和分析;这种方法产生了多项式时间内点方法,超出了传统的线性和二次规划的各种问题。这本书包含了凸规划的一般理论的新的和重要的结果,例如,他们的“二次”问题的表述,其中对偶理论是完全对称的。对于所描述的每个算法,作者都仔细地推导出以给定精度解决给定问题族所需的计算量的精确界限。在一些情况下,他们获得了比以前已知的更好的问题复杂性估计。本书中描述的几个新算法,例如,投影方法,已经在“现实世界”的问题上被实现和测试,并且在实践中被发现是非常有效的。内容:第一章:自调和函数与牛顿法;第二章:路径跟踪内点法;第3章:势约简内点法;第四章:如何构建自我和谐障碍;第五章:凸优化中的应用;第6章:单调算子的变分不等式;第七章:线性和线性约束二次问题的加速度
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Interior-point polynomial algorithms in convex programming
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. In this book, the authors describe the first unified theory of polynomial-time interior-point methods. Their approach provides a simple and elegant framework in which all known polynomial-time interior-point methods can be explained and analyzed; this approach yields polynomial-time interior-point methods for a wide variety of problems beyond the traditional linear and quadratic programs. The book contains new and important results in the general theory of convex programming, e.g., their "conic" problem formulation in which duality theory is completely symmetric. For each algorithm described, the authors carefully derive precise bounds on the computational effort required to solve a given family of problems to a given precision. In several cases they obtain better problem complexity estimates than were previously known. Several of the new algorithms described in this book, e.g., the projective method, have been implemented, tested on "real world" problems, and found to be extremely efficient in practice. Contents : Chapter 1: Self-Concordant Functions and Newton Method; Chapter 2: Path-Following Interior-Point Methods; Chapter 3: Potential Reduction Interior-Point Methods; Chapter 4: How to Construct Self- Concordant Barriers; Chapter 5: Applications in Convex Optimization; Chapter 6: Variational Inequalities with Monotone Operators; Chapter 7: Acceleration for Linear and Linearly Constrained Quadratic Problems
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Interior-point polynomial algorithms in convex programming Methods and applications of interval analysis
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