Systems have evolved in such a way that today’s parallel systems are capable of offering high capacity and better performance. The design of approaches seeking for the best set of parameters in the context of a high-performance execution is fundamental. Although complex, heuristic methods are strategies that deal with high-dimensional optimization problems. We are proposing to enhance the evaluation method of a baseline heuristic that uses sampling and clustering techniques to optimize a complex, large and dynamic system. To carry out our proposal we selected the benchmark test functions and perform a density-based analysis along with k-means to cluster into feasible regions, discarding the non-relevant areas. With this, we aim to avoid get...
The contribution of the thesis is the development of two parallel Best-First Search algorithms, one ...
We study the problem of finding an optimum clustering, a problem known to be NP-hard. Existing liter...
The contribution of the thesis is the development of two parallel Best-First Search algorithms, one ...
Designing and modeling an optimization algorithm with dedicated search is a costly process and it ne...
In the world of optimization, especially concerning metaheuristics, solving complex problems represe...
Observations on recent research of clustering problems illustrate that most of the approaches used t...
This paper presents the Clustering Search (CS) as a new hybrid metaheuristic, which works in conjunc...
In this paper, we investigate application of various options of algorithms with greedy ...
This paper presents the Clustering Search (CS) as a new hybrid metaheuristic, which works in conjunc...
Abstract. This paper analyses the data clustering problem from the continuous black-box optimization...
Abstract: We study the problem of finding an optimum clustering, a problem known to be NP-hard. Exis...
This paper analyses the data clustering problem from the continuous black-box optimization point of ...
Over the last decade, metaheuristic algorithms have become well-established approaches utilized for ...
Data clustering is frequently utilized in the early stages of analyzing big data. It enables the exa...
General purpose and highly applicable clustering methods are usually required during the early stage...
The contribution of the thesis is the development of two parallel Best-First Search algorithms, one ...
We study the problem of finding an optimum clustering, a problem known to be NP-hard. Existing liter...
The contribution of the thesis is the development of two parallel Best-First Search algorithms, one ...
Designing and modeling an optimization algorithm with dedicated search is a costly process and it ne...
In the world of optimization, especially concerning metaheuristics, solving complex problems represe...
Observations on recent research of clustering problems illustrate that most of the approaches used t...
This paper presents the Clustering Search (CS) as a new hybrid metaheuristic, which works in conjunc...
In this paper, we investigate application of various options of algorithms with greedy ...
This paper presents the Clustering Search (CS) as a new hybrid metaheuristic, which works in conjunc...
Abstract. This paper analyses the data clustering problem from the continuous black-box optimization...
Abstract: We study the problem of finding an optimum clustering, a problem known to be NP-hard. Exis...
This paper analyses the data clustering problem from the continuous black-box optimization point of ...
Over the last decade, metaheuristic algorithms have become well-established approaches utilized for ...
Data clustering is frequently utilized in the early stages of analyzing big data. It enables the exa...
General purpose and highly applicable clustering methods are usually required during the early stage...
The contribution of the thesis is the development of two parallel Best-First Search algorithms, one ...
We study the problem of finding an optimum clustering, a problem known to be NP-hard. Existing liter...
The contribution of the thesis is the development of two parallel Best-First Search algorithms, one ...