启发式
数学优化
计算机科学
基数(数据建模)
最优化问题
正规化(语言学)
启发式
人工智能
数学
数据挖掘
作者
Andreas M. Tillmann,Daniel Bienstock,Andrea Lodi,Alexandra Schwartz
出处
期刊:Siam Review
[Society for Industrial and Applied Mathematics]
日期:2024-05-01
卷期号:66 (3): 403-477
被引量:12
摘要
We survey optimization problems that involve the cardinality of variable vectors in constraints or the objective function. We provide a unified viewpoint on the general problem classes and models, and give concrete examples from diverse application fields such as signal and image processing, portfolio selection, or machine learning. The paper discusses general-purpose modeling techniques and broadly applicable as well as problem-specific exact and heuristic solution approaches. While our perspective is that of mathematical optimization, a main goal of this work is to reach out to and build bridges between the different communities in which cardinality optimization problems are frequently encountered. In particular, we highlight that modern mixed-integer programming, which is often regarded as impractical due to commonly unsatisfactory behavior of black-box solvers applied to generic problem formulations, can in fact produce provably high-quality or even optimal solutions for cardinality optimization problems, even in large-scale real-world settings. Achieving such performance typically draws on the merits of problem-specific knowledge that may stem from different fields of application and, e.g., shed light on structural properties of a model or its solutions, or lead to the development of efficient heuristics; we also provide some illustrative examples.
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