The problem of dividing a sequence of values into segments occurs in database systems, information retrieval, and knowledge management. The challenge is to select a finite number of boundaries for the segments so as to optimize an objective error function defined over those segments. Although this optimization problem can be solved in polynomial time, the algorithm which achieves the minimum error does not scale well, hence it is not practical for applications with massive data sets. There is considerable research with numerous approximation and heuristic algorithms. Still, none of those approaches has resolved the quality-efficiency tradeoff in a satisfactory manner. In (Halim, Karras, and Yap 2009), we obtain near linear time algorithms w...
Local search heuristics are an important class of algorithms for obtaining good solutions for hard c...
We propose a pioneering enhanced genetic algorithm to find a global optimal solution without derivat...
Configuration similarity is a special form of content based image retrieval which considers relative...
The paper focuses on the efficiency of local search in a Hybrid evolutionary algorithm (HEA), with a...
One of the most promising research directions that focus on eliminating the drawbacks of fixed, prob...
This book covers local search for combinatorial optimization and its extension to mixed-variable opt...
International audienceWe present in this paper a new fully automated method for irregular histogram...
Local search is a powerful technique on many combinatorial optimisation problems. However, the effec...
Abstract — Achieving a balance between the exploration and exploitation capabilities of genetic algo...
Histograms have long been used to capture attribute value distribution statistics for query optimize...
Histograms are among the most popular structures for the succinct summarization of data in a variety...
Local search is an integral part of many meta-heuristic strategies that solve single objective optim...
Efficient search for nearest neighbors (NN) is a fundamental problem arising in a large variety of a...
Achieving a balance between the exploration and exploitation capabilities of genetic algorithms is a...
In this paper we present an Evolutionary Algorithm (EA) that learns good heuristics from a given set...
Local search heuristics are an important class of algorithms for obtaining good solutions for hard c...
We propose a pioneering enhanced genetic algorithm to find a global optimal solution without derivat...
Configuration similarity is a special form of content based image retrieval which considers relative...
The paper focuses on the efficiency of local search in a Hybrid evolutionary algorithm (HEA), with a...
One of the most promising research directions that focus on eliminating the drawbacks of fixed, prob...
This book covers local search for combinatorial optimization and its extension to mixed-variable opt...
International audienceWe present in this paper a new fully automated method for irregular histogram...
Local search is a powerful technique on many combinatorial optimisation problems. However, the effec...
Abstract — Achieving a balance between the exploration and exploitation capabilities of genetic algo...
Histograms have long been used to capture attribute value distribution statistics for query optimize...
Histograms are among the most popular structures for the succinct summarization of data in a variety...
Local search is an integral part of many meta-heuristic strategies that solve single objective optim...
Efficient search for nearest neighbors (NN) is a fundamental problem arising in a large variety of a...
Achieving a balance between the exploration and exploitation capabilities of genetic algorithms is a...
In this paper we present an Evolutionary Algorithm (EA) that learns good heuristics from a given set...
Local search heuristics are an important class of algorithms for obtaining good solutions for hard c...
We propose a pioneering enhanced genetic algorithm to find a global optimal solution without derivat...
Configuration similarity is a special form of content based image retrieval which considers relative...