de
en
Schliessen
Detailsuche
Bibliotheken
Projekt
Impressum
Datenschutz
zum Inhalt
Detailsuche
Schnellsuche:
OK
Ergebnisliste
Titel
Titel
Inhalt
Inhalt
Seite
Seite
Im Dokument suchen
Kerschke, Pascal: Automated and Feature-Based Problem Characterization and Algorithm Selection Through Machine Learning
Inhalt
Abstract
Introduction
Benchmarking
Exploratory Landscape Analysis
Algorithm Selection
Characterizing the Global Structure of Continuous Black-Box Problems
Contributed Material
Cell Mapping Techniques for Exploratory Landscape Analysis
Detecting Funnel Structures by Means of Exploratory Landscape Analysis
Low-Budget Exploratory Landscape Analysis on Multiple Peaks Models
Flacco – A Toolbox for Exploratory Landscape Analysis with R
Contributed Material
The R-Package FLACCO for Exploratory Landscape Analysis with Applications to Multi-Objective Optimization Problems
flaccogui: Exploratory Landscape Analysis for Everyone
Comprehensive Feature-Based Landscape Analysis of Continuous and Constrained Optimization Problems Using the R-Package flacco
Feature-Based Algorithm Selection from Optimizer Portfolios
Contributed Material
Improving the State of the Art in Inexact TSP Solving using Per-Instance Algorithm Selection
Leveraging TSP Solver Complementarity through Machine Learning
Automated Algorithm Selection on Continuous Black-Box Problems By Combining Exploratory Landscape Analysis and Machine Learning
Platforms for Collaborative Research on Algorithm Selection and Machine Learning
Contributed Material
ASlib: A Benchmark Library for Algorithm Selection
OpenML: An R Package to Connect to the Machine Learning Platform OpenML
Summary and Outlook
Bibliography
Appendix: Contributed Publications
Characterizing the Global Structure of Continuous Black-Box Problems
Cell Mapping Techniques for Exploratory Landscape Analysis
Detecting Funnel Structures By Means of Exploratory Landscape Analysis
Low-Budget Exploratory Landscape Analysis on Multiple Peaks Models
Flacco – A Toolbox for Exploratory Landscape Analysis with R
The R-Package FLACCO for Exploratory Landscape Analysis with Applications to Multi-Objective Optimization Problems
flaccogui: Exploratory Landscape Analysis for Everyone
Comprehensive Feature-Based Landscape Analysis of Continuous and Constrained Optimization Problems Using the R-Package flacco
Feature-Based Algorithm Selection from Optimizer Portfolios
Improving the State of the Art in Inexact TSP Solving Using Per-Instance Algorithm Selection
Leveraging TSP Solver Complementarity through Machine Learning
Automated Algorithm Selection on Continuous Black-Box Problems By Combining Exploratory Landscape Analysis and Machine Learning
Platforms for Collaborative Research on Algorithm Selection and Machine Learning
ASlib: A Benchmark Library for Algorithm Selection
OpenML: An R Package to Connect to the Machine Learning Platform OpenML