Bayesian and High-Dimensional Global Optimization Bayesian and High-Dimensional Global Optimization
SpringerBriefs in Optimization

Bayesian and High-Dimensional Global Optimization

    • US$54.99
    • US$54.99

출판사 설명

Accessible to a variety of readers, this book is of interest to specialists, graduate students and researchers in mathematics, optimization, computer science, operations research, management science, engineering and other applied areas interested in solving optimization problems. Basic principles, potential and boundaries of applicability of stochastic global optimization techniques are examined in this book. A variety of issues that face specialists in global optimization are explored, such as multidimensional spaces which are frequently ignored by researchers. The importance of precise interpretation of the mathematical results in assessments of optimization methods is demonstrated through examples of convergence in probability of random search. Methodological issues concerning construction and applicability of stochastic global optimization methods are discussed, including the one-step optimal average improvement method based on a statistical model of the objective function. A significant portion of this book is devoted to an analysis of high-dimensional global optimization problems and the so-called ‘curse of dimensionality’. An examination of the three different classes of high-dimensional optimization problems, the geometry of high-dimensional balls and cubes, very slow convergence of global random search algorithms in large-dimensional problems , and poor uniformity of the uniformly distributed sequences of points are included in this book. 

장르
과학 및 자연
출시일
2021년
3월 2일
언어
EN
영어
길이
126
페이지
출판사
Springer International Publishing
판매자
Springer Nature B.V.
크기
11.1
MB
Advances in Optimization and Applications Advances in Optimization and Applications
2021년
Stochastic Global Optimization Stochastic Global Optimization
2007년
Mathematical Optimization Theory and Operations Research: Recent Trends Mathematical Optimization Theory and Operations Research: Recent Trends
2021년
Numerical Analysis and Optimization Numerical Analysis and Optimization
2021년
Approximation and Optimization Approximation and Optimization
2019년
Monte Carlo and Quasi-Monte Carlo Methods 2008 Monte Carlo and Quasi-Monte Carlo Methods 2008
2010년
Singular Spectrum Analysis for Time Series Singular Spectrum Analysis for Time Series
2013년
High-Dimensional Optimization High-Dimensional Optimization
2024년
Singular Spectrum Analysis for Time Series Singular Spectrum Analysis for Time Series
2020년
Singular Spectrum Analysis with R Singular Spectrum Analysis with R
2018년
Advances in Stochastic and Deterministic Global Optimization Advances in Stochastic and Deterministic Global Optimization
2016년
Stochastic Global Optimization Stochastic Global Optimization
2007년
Intentional Risk Management through Complex Networks Analysis Intentional Risk Management through Complex Networks Analysis
2015년
BONUS Algorithm for Large Scale Stochastic Nonlinear Programming Problems BONUS Algorithm for Large Scale Stochastic Nonlinear Programming Problems
2015년
Topics in Matroid Theory Topics in Matroid Theory
2013년
Data Storage for Social Networks Data Storage for Social Networks
2012년
Demand Flexibility in Supply Chain Planning Demand Flexibility in Supply Chain Planning
2012년
Multiple Information Source Bayesian Optimization Multiple Information Source Bayesian Optimization
2025년