AbstractThe performance, on a given problem, of search heuristics such as simulated annealing and descent with variable mutation can be described as a function of, and optimised over, the parameters of the heuristic (e.g. the annealing or mutation schedule). We describe heuristics as Markov processes; the search for optimal parameters is then rendered feasible by the use of level-accessible barrier trees for state amalgamation. Results are presented for schedules minimising “where-you-are” and “best-so-far” cost, over binary perceptron, spin-glass and Max-SAT problems. We also compute first-passage time for several “toy heuristics”, including constant-temperature annealing and fixed-rate mutation search
Based on the mutation matrix formalism and past statistics of genetic algorithm, a Markov Chain tran...
Based on the mutation matrix formalism and past statistics of genetic algorithm, a Markov Chain tran...
We propose a heuristic search algorithm for finding optimal policies in a new class of sequential de...
AbstractThe performance, on a given problem, of search heuristics such as simulated annealing and de...
The quality of solution provided by a search heuristic on a particular problem is by no means an abs...
This chapter compiles a number of results that apply the theory of parameterized algorithmics to the...
Many decision problems contain, in some form, a NP-hard combinatorial problem. Therefore decision su...
Barrier trees are a method for representing the landscape structure of high-dimensional discrete spa...
With increasing size of sequence databases heuristic search approaches have become necessary. Hidden...
This thesis presents Barrier Trees and Barrier based models as tools to study small instances of pro...
This paper presents heuristic search algorithms which work within memory constraints. These algorith...
A model containing multiple optimal solutions and nonoptimal solutions is constructed to study the p...
In this study, a standard moving-target search model was extended with a multiple-search-speed optio...
AbstractThis paper analyzes the performance of local search algorithms (guided by the best-to-date s...
There are many problems that still cannot be solved exactly in a reasonable time despite rapid incre...
Based on the mutation matrix formalism and past statistics of genetic algorithm, a Markov Chain tran...
Based on the mutation matrix formalism and past statistics of genetic algorithm, a Markov Chain tran...
We propose a heuristic search algorithm for finding optimal policies in a new class of sequential de...
AbstractThe performance, on a given problem, of search heuristics such as simulated annealing and de...
The quality of solution provided by a search heuristic on a particular problem is by no means an abs...
This chapter compiles a number of results that apply the theory of parameterized algorithmics to the...
Many decision problems contain, in some form, a NP-hard combinatorial problem. Therefore decision su...
Barrier trees are a method for representing the landscape structure of high-dimensional discrete spa...
With increasing size of sequence databases heuristic search approaches have become necessary. Hidden...
This thesis presents Barrier Trees and Barrier based models as tools to study small instances of pro...
This paper presents heuristic search algorithms which work within memory constraints. These algorith...
A model containing multiple optimal solutions and nonoptimal solutions is constructed to study the p...
In this study, a standard moving-target search model was extended with a multiple-search-speed optio...
AbstractThis paper analyzes the performance of local search algorithms (guided by the best-to-date s...
There are many problems that still cannot be solved exactly in a reasonable time despite rapid incre...
Based on the mutation matrix formalism and past statistics of genetic algorithm, a Markov Chain tran...
Based on the mutation matrix formalism and past statistics of genetic algorithm, a Markov Chain tran...
We propose a heuristic search algorithm for finding optimal policies in a new class of sequential de...