The fields of machine meta-learning and hyper-heuristic optimisation have developed mostly independently of each other, although evolutionary algorithms (particularly genetic programming) have recently played an important role in the development of both fields. Recent work in both fields shares a common goal, that of automating as much of the algorithm design process as possible. In this paper we first provide a historical perspective on automated algorithm design, and then we discuss similarities and differences between meta-learning in the field of supervised machine learning (classification) and hyper-heuristics in the field of optimisation. This discussion focuses on the dimensions of the problem space, the algorithm space and the perfo...
Choosing the correct algorithm to solve a problem still remains an issue 40 years after the Algorith...
Conventional and classical optimization methods are not efficient enough to deal with complicated, N...
In recent years, there have been significant advances in the theory and application of metaheuristic...
The fields of machine meta-learning and hyper-heuristic optimisation have developed mostly independe...
A hyper-heuristic is a search method or learning mechanism for selecting or generating heuristics to...
Meta-heuristics are practical optimisation-techniques I a pragmatic approach to NP-hard optimisation...
International audienceDuring the past few years, research in applying machine learning (ML) to desig...
Hyper-heuristics represent a novel search methodology that is motivated by the goal of automating th...
Abstract This chapter aims to extend on the overview of heuristic and metaheuristics described in ch...
Solving complex optimization problems can be painstakingly difficult endeavor considering multiple a...
This book aims at attracting the interest of researchers and practitioners around the applicability ...
The many machine learning and data mining techniques produced over the last decades can prove invalu...
Abstract. Hyper-heuristic frameworks have emerged out of the shadows of meta-heuristic techniques. I...
Meta-heuristics sample a search space, with quality dictated by an objective function. For any pair ...
Plenary speakerNational audienceThe lecture will focus on metaheuristics and will present a general ...
Choosing the correct algorithm to solve a problem still remains an issue 40 years after the Algorith...
Conventional and classical optimization methods are not efficient enough to deal with complicated, N...
In recent years, there have been significant advances in the theory and application of metaheuristic...
The fields of machine meta-learning and hyper-heuristic optimisation have developed mostly independe...
A hyper-heuristic is a search method or learning mechanism for selecting or generating heuristics to...
Meta-heuristics are practical optimisation-techniques I a pragmatic approach to NP-hard optimisation...
International audienceDuring the past few years, research in applying machine learning (ML) to desig...
Hyper-heuristics represent a novel search methodology that is motivated by the goal of automating th...
Abstract This chapter aims to extend on the overview of heuristic and metaheuristics described in ch...
Solving complex optimization problems can be painstakingly difficult endeavor considering multiple a...
This book aims at attracting the interest of researchers and practitioners around the applicability ...
The many machine learning and data mining techniques produced over the last decades can prove invalu...
Abstract. Hyper-heuristic frameworks have emerged out of the shadows of meta-heuristic techniques. I...
Meta-heuristics sample a search space, with quality dictated by an objective function. For any pair ...
Plenary speakerNational audienceThe lecture will focus on metaheuristics and will present a general ...
Choosing the correct algorithm to solve a problem still remains an issue 40 years after the Algorith...
Conventional and classical optimization methods are not efficient enough to deal with complicated, N...
In recent years, there have been significant advances in the theory and application of metaheuristic...