Most of the real world problems have dynamic characteristics, where one or more elements of the underlying model for a given problem including the objective, constraints or even environmental parameters may change over time. Hyper-heuristics are problem-independent meta-heuristic techniques that are automating the process of selecting and generating multiple low-level heuristics to solve static combinatorial optimization problems. In this paper, we present a novel hybrid strategy for applicability of hyper-heuristic techniques on dynamic environments by integrating them with the memory/search algorithm. The memory/search algorithm is an important evolutionary technique that have applied on various dynamic optimization problems. We validate ...
This paper proposes a novel adaptive local search algorithm for tackling real-valued (or continuous)...
The development of a heuristic to solve an optimisation problem in a new domain, or a specific varia...
Designing generic problem solvers that perform well across a diverse set of problems is a challengin...
The generalized assignment problem is a well-known NP-complete problem whose objective is to find a ...
Dynamic optimization problems provide a challenge in that optima have to be tracked as the environme...
In recent research, hyper-heuristics have attracted increasing attention among researchers in variou...
Multi-objective evolutionary algorithms and selection hyper-heuristics are adaptive methods that can...
In most of the optimization studies, the problem related data is assumed to be exactly known beforeh...
Hyper-heuristics represent a novel search methodology that is motivated by the goal of automating th...
Hyper-heuristics comprise a set of approaches that are motivated (at least in part) by the goal of a...
The present study is concerned with the design and analysis of a selection hyper-heuristic for solvi...
Designing a dedicated search and optimisation algorithm is a time-consuming process requiring an in-...
Reusability is a desired feature for search and optimisation strategies. Low-level, problem-dependen...
This chapter presents a literature review of the main advances in the field of hyper-heuristics, sin...
Hyper-heuristics are search methodologies that aim to provide high-quality solutions across a wide v...
This paper proposes a novel adaptive local search algorithm for tackling real-valued (or continuous)...
The development of a heuristic to solve an optimisation problem in a new domain, or a specific varia...
Designing generic problem solvers that perform well across a diverse set of problems is a challengin...
The generalized assignment problem is a well-known NP-complete problem whose objective is to find a ...
Dynamic optimization problems provide a challenge in that optima have to be tracked as the environme...
In recent research, hyper-heuristics have attracted increasing attention among researchers in variou...
Multi-objective evolutionary algorithms and selection hyper-heuristics are adaptive methods that can...
In most of the optimization studies, the problem related data is assumed to be exactly known beforeh...
Hyper-heuristics represent a novel search methodology that is motivated by the goal of automating th...
Hyper-heuristics comprise a set of approaches that are motivated (at least in part) by the goal of a...
The present study is concerned with the design and analysis of a selection hyper-heuristic for solvi...
Designing a dedicated search and optimisation algorithm is a time-consuming process requiring an in-...
Reusability is a desired feature for search and optimisation strategies. Low-level, problem-dependen...
This chapter presents a literature review of the main advances in the field of hyper-heuristics, sin...
Hyper-heuristics are search methodologies that aim to provide high-quality solutions across a wide v...
This paper proposes a novel adaptive local search algorithm for tackling real-valued (or continuous)...
The development of a heuristic to solve an optimisation problem in a new domain, or a specific varia...
Designing generic problem solvers that perform well across a diverse set of problems is a challengin...