The goal of this research is to develop a systematic, integrated method of designing efficient search algorithms that solve optimization problems in real time. Search algorithms studied in this thesis comprise meta-control and primitive search. The class of optimization problems addressed are called combinatorial optimization problems, examples of which include many NP-hard scheduling and planning problems, and problems in operations research and artificial-intelligence applications. The problems we have addressed have a well-defined problem objective and a finite set of well-defined problem constraints. In this research, we use state-space trees as problem representations. The approach we have undertaken in designing efficient search algor...
As a branch of operations research, combinatorial optimization plays important role in obtaining eff...
This is the first book to cover GRASP (Greedy Randomized Adaptive Search Procedures), a metaheuristi...
Advances in Bio-inspired Combinatorial Optimization Problems' illustrates several recent bio-inspire...
The goal of this research is to develop a systematic, integrated method of designing efficient searc...
... techniques for designing better search algorithms. Knowledge captured in designing one search al...
In this paper, we review parallel search techniques for approximating the global optimal solution of...
The main topic of this thesis is the combination of metaheuristics and other methods for solving com...
The main topic of this thesis is the combination of metaheuristics and other methods for solving com...
The main topic of this thesis is the combination of metaheuristics and other methods for solving com...
This talk will present a tutorial on the implementation and use of metaheuristics and approximation ...
This talk will present a tutorial on the implementation and use of metaheuristics and approximation ...
This talk will present a tutorial on the implementation and use of metaheuristics and approximation ...
This paper presents a short (and not exhaustive) introduction to the most used exact, approximation,...
This paper presents a short (and not exhaustive) introduction to the most used exact, approximation,...
This paper presents a short (and not exhaustive) introduction to the most used exact, approximation,...
As a branch of operations research, combinatorial optimization plays important role in obtaining eff...
This is the first book to cover GRASP (Greedy Randomized Adaptive Search Procedures), a metaheuristi...
Advances in Bio-inspired Combinatorial Optimization Problems' illustrates several recent bio-inspire...
The goal of this research is to develop a systematic, integrated method of designing efficient searc...
... techniques for designing better search algorithms. Knowledge captured in designing one search al...
In this paper, we review parallel search techniques for approximating the global optimal solution of...
The main topic of this thesis is the combination of metaheuristics and other methods for solving com...
The main topic of this thesis is the combination of metaheuristics and other methods for solving com...
The main topic of this thesis is the combination of metaheuristics and other methods for solving com...
This talk will present a tutorial on the implementation and use of metaheuristics and approximation ...
This talk will present a tutorial on the implementation and use of metaheuristics and approximation ...
This talk will present a tutorial on the implementation and use of metaheuristics and approximation ...
This paper presents a short (and not exhaustive) introduction to the most used exact, approximation,...
This paper presents a short (and not exhaustive) introduction to the most used exact, approximation,...
This paper presents a short (and not exhaustive) introduction to the most used exact, approximation,...
As a branch of operations research, combinatorial optimization plays important role in obtaining eff...
This is the first book to cover GRASP (Greedy Randomized Adaptive Search Procedures), a metaheuristi...
Advances in Bio-inspired Combinatorial Optimization Problems' illustrates several recent bio-inspire...