Suchergebnisse - "automated algorithm configuration"

  • Treffer 1 - 13 von 13
Treffer weiter einschränken
  1. 1

    Automated Algorithm Selection: Survey and Perspectives von Kerschke, Pascal, Hoos, Holger H, Neumann, Frank, Trautmann, Heike

    ISSN: 1530-9304, 1530-9304
    Veröffentlicht: United States 01.03.2019
    Veröffentlicht in Evolutionary computation (01.03.2019)
    “… It has long been observed that for practically any computational problem that has been intensely studied, different instances are best solved using different …”
    Weitere Angaben
    Journal Article
  2. 2

    Learn to optimize—a brief overview von Tang, Ke, Yao, Xin

    ISSN: 2095-5138, 2053-714X, 2053-714X
    Veröffentlicht: China Oxford University Press 01.08.2024
    Veröffentlicht in National science review (01.08.2024)
    “… Most optimization problems of practical significance are typically solved by highly configurable parameterized algorithms. To achieve the best performance on a …”
    Volltext
    Journal Article
  3. 3

    Speeding up neural network robustness verification via algorithm configuration and an optimised mixed integer linear programming solver portfolio von König, Matthias, Hoos, Holger H., Rijn, Jan N. van

    ISSN: 0885-6125, 1573-0565
    Veröffentlicht: New York Springer US 01.12.2022
    Veröffentlicht in Machine learning (01.12.2022)
    “… Despite their great success in recent years, neural networks have been found to be vulnerable to adversarial attacks. These attacks are often based on slight …”
    Volltext
    Journal Article
  4. 4

    Analysing differences between algorithm configurations through ablation von Fawcett, Chris, Hoos, Holger H.

    ISSN: 1381-1231, 1572-9397
    Veröffentlicht: New York Springer US 01.08.2016
    Veröffentlicht in Journal of heuristics (01.08.2016)
    “… Developers of high-performance algorithms for hard computational problems increasingly take advantage of automated parameter tuning and algorithm configuration …”
    Volltext
    Journal Article
  5. 5

    Automated Configuration of Evolutionary Algorithms via Deep Reinforcement Learning for Constrained Multiobjective Optimization von Ming, Fei, Gong, Wenyin, Xue, Bing, Zhang, Mengjie, Jin, Yaochu

    ISSN: 2168-2267, 2168-2275
    Veröffentlicht: United States IEEE 01.12.2025
    Veröffentlicht in IEEE transactions on cybernetics (01.12.2025)
    “… Learning to optimize and automated algorithm design are attracting increasing attention, but it is still in its infancy in constrained multiobjective …”
    Volltext
    Journal Article
  6. 6

    Exact stochastic constraint optimisation with applications in network analysis von Latour, Anna L.D., Babaki, Behrouz, Fokkinga, Daniël, Anastacio, Marie, Hoos, Holger H., Nijssen, Siegfried

    ISSN: 0004-3702, 1872-7921
    Veröffentlicht: Amsterdam Elsevier B.V 01.03.2022
    Veröffentlicht in Artificial intelligence (01.03.2022)
    “… We present an extensive study of methods for exactly solving stochastic constraint (optimisation) problems (SCPs) in network analysis. These problems are …”
    Volltext
    Journal Article
  7. 7

    A data-driven methodology for the automated configuration of online algorithms von Dunke, Fabian, Nickel, Stefan

    ISSN: 0167-9236, 1873-5797
    Veröffentlicht: Amsterdam Elsevier B.V 01.10.2020
    Veröffentlicht in Decision Support Systems (01.10.2020)
    “… With the goal of devising algorithms for decision support in operational tasks, we introduce a new methodology for the automated configuration of algorithms …”
    Volltext
    Journal Article
  8. 8

    Improving the computational efficiency of stochastic programs using automated algorithm configuration: an application to decentralized energy systems von Schwarz, Hannes, Kotthoff, Lars, Hoos, Holger, Fichtner, Wolf, Bertsch, Valentin

    ISSN: 0254-5330, 1572-9338
    Veröffentlicht: New York Springer Nature B.V 2019
    Veröffentlicht in Annals of operations research (2019)
    “… The optimization of decentralized energy systems is an important practical problem that can be modeled using stochastic programs and solved via their …”
    Volltext
    Journal Article
  9. 9

    Continuous optimization algorithms for tuning real and integer parameters of swarm intelligence algorithms von Yuan, Zhi, Montes de Oca, Marco A., Birattari, Mauro, Stützle, Thomas

    ISSN: 1935-3812, 1935-3820
    Veröffentlicht: Boston Springer US 01.03.2012
    Veröffentlicht in Swarm intelligence (01.03.2012)
    “… The performance of optimization algorithms, including those based on swarm intelligence, depends on the values assigned to their parameters. To obtain high …”
    Volltext
    Journal Article
  10. 10

    Towards Feature-Free Automated Algorithm Selection for Single-Objective Continuous Black-Box Optimization von Prager, Raphael Patrick, Vinzent Seiler, Moritz, Trautmann, Heike, Kerschke, Pascal

    Veröffentlicht: IEEE 05.12.2021
    “… We propose a novel method for automated algorithm selection in the domain of single-objective continuous black-box optimization. In contrast to existing …”
    Volltext
    Tagungsbericht
  11. 11

    Encoding Adaptability of Software Engineering Tools as Algorithm Configuration Problem: A Case Study von Basmer, Maike, Kehrer, Timo

    Veröffentlicht: IEEE 01.11.2019
    “… Nowadays software is often highly configurable, and the required adaptation is a complex and tedious task when performed manually. Moreover, hand-crafted …”
    Volltext
    Tagungsbericht
  12. 12

    Automatic parameter configuration for an elite solution hyper-heuristic applied to the Multidimensional Knapsack Problem von Urra, Enrique, Cubillos, Claudio, Cabrera-Paniagua, Daniel, Lefranc, Gaston

    Veröffentlicht: IEEE 01.05.2016
    “… Hyper-heuristics are methods for problem solving that decouple the search mechanisms from the domain features, providing a reusable approach across different …”
    Volltext
    Tagungsbericht
  13. 13

    An algorithm development environment for problem-solving: software review von Chen, Xianshun

    ISSN: 1865-9284, 1865-9292
    Veröffentlicht: Berlin/Heidelberg Springer-Verlag 01.06.2012
    Veröffentlicht in Memetic computing (01.06.2012)
    “… Algorithm Development Environment for Problem Solving (ADEP) is a development platform catering to the needs of designing and exploring computationally viable …”
    Volltext
    Journal Article