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引用次数: 0
摘要
SIAM Review》,第 66 卷,第 3 期,第 401-401 页,2024 年 5 月。 在 "Cardinality Minimization, Constraints, and Regularization:中,Andreas M. Tillmann、Daniel Bienstock、Andrea Lodi 和 Alexandra Schwartz 考虑了一类优化问题,这些问题涉及约束条件或目标函数中变量向量的万有性。这类问题有很多重要应用,例如医学成像(如 X 射线断层扫描)、人脸识别、无线传感器网络设计、选股、晶体学、天文学、计算机视觉、分类和回归、可解释机器学习以及统计数据分析。本文的重点是连续变量,这使它有别于无数经典的运筹学或组合优化问题。本文详细研究了三类一般问题:卡方最小化问题、卡方受限问题和正则化卡方问题。论文提供了一个连接多个学科的路线图,并概述了可用于万有引力优化问题的多种不同计算方法。由于此类问题具有跨学科性质,作者根据具体应用领域组织了综述,并指出了重叠和差异。论文首先介绍了突出的卡方优化问题,即信号和图像处理、投资组合优化和管理、高维统计和机器学习,以及组合学、矩阵稀疏化和组/块稀疏性中的一些相关问题。然后继续介绍精确模型和求解方法。接下来的章节专门讨论了松弛和启发式算法,以及精确算法和启发式算法的可扩展性。作者在组织篇幅较长的论文方面做出了很大努力,这意味着表格和图表可以引导读者找到感兴趣的应用或结果。此外,他们还提供了 400 多篇参考文献,对文献进行了广泛的概述。
SIAM Review, Volume 66, Issue 3, Page 401-401, May 2024. In “Cardinality Minimization, Constraints, and Regularization: A Survey," Andreas M. Tillmann, Daniel Bienstock, Andrea Lodi, and Alexandra Schwartz consider a class of optimization problems that involve the cardinality of variable vectors in constraints or in the objective function. Such problems have many important applications, e.g., medical imaging (like X-ray tomography), face recognition, wireless sensor network design, stock picking, crystallography, astronomy, computer vision, classification and regression, interpretable machine learning, and statistical data analysis. The emphasis in this paper is on continuous variables, which distinguishes it from a myriad of classical operation research or combinatorial optimization problems. Three general problem classes are studied in detail: cardinality minimization problems, cardinality-constrained problems, and regularized cardinality problems. The paper provides a road map connecting several disciplines and offers an overview of many different computational approaches that are available for cardinality optimization problems. Since such problems are of cross-disciplinary nature, the authors organized their review according to specific application areas and point out overlaps and differences. The paper starts with prominent cardinality optimization problems, namely, signal and image processing, portfolio optimization and management, high-dimensional statistics and machine learning, and some related problems from combinatorics, matrix sparsification, and group/block sparsity. It then continues with exact models and solution methods. The further sections are devoted to relaxations and heuristics, scalability of exact and heuristic algorithms. The authors made a strong effort regarding the organization of their quite long paper, meaning that tables and figures guide the reader to an application or result of interest. In addition, they provide an extensive overview on the literature with more than 400 references.
期刊介绍:
Survey and Review feature papers that provide an integrative and current viewpoint on important topics in applied or computational mathematics and scientific computing. These papers aim to offer a comprehensive perspective on the subject matter.
Research Spotlights publish concise research papers in applied and computational mathematics that are of interest to a wide range of readers in SIAM Review. The papers in this section present innovative ideas that are clearly explained and motivated. They stand out from regular publications in specific SIAM journals due to their accessibility and potential for widespread and long-lasting influence.