Performance analysis of continuous black-box optimization algorithms via footprints in instance space

被引:0
|
作者
Muñoz M.A. [1 ]
Smith-Miles K.A. [1 ]
机构
[1] School of Mathematical Sciences, Monash University, Clayton, 3800, VIC
来源
| 1600年 / MIT Press Journals卷 / 25期
基金
澳大利亚研究理事会;
关键词
Algorithm selection; Black-box continuous optimization; Exploratory landscape analysis; Footprint analysis; Performance prediction;
D O I
10.1162/EVCO_a_00194
中图分类号
学科分类号
摘要
This article presents a method for the objective assessment of an algorithm’s strengths and weaknesses. Instead of examining the performance of only one or more algorithms on a benchmark set, or generating custom problems that maximize the performance difference between two algorithms, ourmethod quantifies both the nature of the test instances and the algorithm performance. Our aim is to gather information about possible phase transitions in performance, that is, the points in which a small change in problem structure produces algorithm failure. The method is based on the accurate estimation and characterization of the algorithm footprints, that is, the regions of instance space in which good or exceptional performance is expected from an algorithm. A footprint can be estimated for each algorithm and for the overall portfolio. Therefore, we select a set of features to generate a common instance space,which we validate by constructing a sufficiently accurate prediction model. We characterize the footprints by their area and density. Our method identifies complementary performance between algorithms, quantifies the common features of hard problems, and locates regions where a phase transition may lie. © 2017 by the Massachusetts Institute of Technology.
引用
收藏
页码:529 / 554
页数:25
相关论文
共 50 条
  • [31] A model for analyzing black-box optimization
    Phan, V
    Skiena, S
    Sumazin, P
    ALGORITHMS AND DATA STRUCTURES, PROCEEDINGS, 2003, 2748 : 424 - 438
  • [32] MSO: a framework for bound-constrained black-box global optimization algorithms
    Abdullah Al-Dujaili
    S. Suresh
    N. Sundararajan
    Journal of Global Optimization, 2016, 66 : 811 - 845
  • [33] Approximation Algorithms for Distributionally-Robust Stochastic Optimization with Black-Box Distributions
    Linhares, Andre
    Swamy, Chaitanya
    PROCEEDINGS OF THE 51ST ANNUAL ACM SIGACT SYMPOSIUM ON THEORY OF COMPUTING (STOC '19), 2019, : 768 - 779
  • [34] MSO: a framework for bound-constrained black-box global optimization algorithms
    Al-Dujaili, Abdullah
    Suresh, S.
    Sundararajan, N.
    JOURNAL OF GLOBAL OPTIMIZATION, 2016, 66 (04) : 811 - 845
  • [35] Speeding-Up Evolutionary Algorithms to Solve Black-Box Optimization Problems
    Echevarrieta, Judith
    Arza, Etor
    Perez, Aritz
    IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION, 2025, 29 (01) : 117 - 131
  • [36] Towards improved benchmarking of black-box optimization algorithms using clustering problems
    Marcus Gallagher
    Soft Computing, 2016, 20 : 3835 - 3849
  • [37] Towards improved benchmarking of black-box optimization algorithms using clustering problems
    Gallagher, Marcus
    SOFT COMPUTING, 2016, 20 (10) : 3835 - 3849
  • [38] We might be afraid of black-box algorithms
    Veliz, Carissa
    Prunkl, Carina
    Phillips-Brown, Milo
    Lechterman, Theodore M.
    JOURNAL OF MEDICAL ETHICS, 2021, 47 (05) : 339 - 340
  • [39] Discovering Representations for Black-box Optimization
    Gaier, Adam
    Asteroth, Alexander
    Mouret, Jean-Baptiste
    GECCO'20: PROCEEDINGS OF THE 2020 GENETIC AND EVOLUTIONARY COMPUTATION CONFERENCE, 2020, : 103 - 111
  • [40] Why We Need a Testbed for Black-Box Optimization Algorithms in Building Simulation
    Waibel, Christoph
    Wortmann, Thomas
    Mavromatidis, Georgios
    Evins, Ralph
    Carmeliet, Jan
    PROCEEDINGS OF BUILDING SIMULATION 2019: 16TH CONFERENCE OF IBPSA, 2020, : 2909 - 2917