16 results on '"Olivares, Rodrigo"'
Search Results
2. A binary monkey search algorithm variation for solving the set covering problem
- Author
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Crawford, Broderick, Soto, Ricardo, Olivares, Rodrigo, Embry, Gabriel, Flores, Diego, Palma, Wenceslao, Castro, Carlos, Paredes, Fernando, and Rubio, José-Miguel
- Published
- 2020
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3. An Imperialist Competitive Algorithm to Solve the Manufacturing Cell Design Problem
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Soto, Ricardo, Crawford, Broderick, Olivares, Rodrigo, Ortega, Héctor, Almonacid, Boris, Kacprzyk, Janusz, Series editor, Pal, Nikhil R., Advisory editor, Bello Perez, Rafael, Advisory editor, Corchado, Emilio S., Advisory editor, Hagras, Hani, Advisory editor, Kóczy, László T., Advisory editor, Kreinovich, Vladik, Advisory editor, Lin, Chin-Teng, Advisory editor, Lu, Jie, Advisory editor, Melin, Patricia, Advisory editor, Nedjah, Nadia, Advisory editor, Nguyen, Ngoc Thanh, Advisory editor, Wang, Jun, Advisory editor, Silhavy, Radek, editor, Silhavy, Petr, editor, and Prokopova, Zdenka, editor
- Published
- 2018
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4. A Harmony Search Algorithm to Solve the Manufacturing Cell Design Problem
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Soto, Ricardo, Crawford, Broderick, Olivares, Rodrigo, Escárate, Felipe, Kacprzyk, Janusz, Series editor, Pal, Nikhil R., Advisory editor, Bello Perez, Rafael, Advisory editor, Corchado, Emilio S., Advisory editor, Hagras, Hani, Advisory editor, Kóczy, László T., Advisory editor, Kreinovich, Vladik, Advisory editor, Lin, Chin-Teng, Advisory editor, Lu, Jie, Advisory editor, Melin, Patricia, Advisory editor, Nedjah, Nadia, Advisory editor, Nguyen, Ngoc Thanh, Advisory editor, Wang, Jun, Advisory editor, Silhavy, Radek, editor, Silhavy, Petr, editor, and Prokopova, Zdenka, editor
- Published
- 2018
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5. Cuckoo Search via Lévy Flight Applied to Optimal Water Supply System Design
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Soto, Ricardo, Crawford, Broderick, Olivares, Rodrigo, Castro, Carlos, Escárate, Pía, Calderón, Steve, Hutchison, David, Series Editor, Kanade, Takeo, Series Editor, Kittler, Josef, Series Editor, Kleinberg, Jon M., Series Editor, Mattern, Friedemann, Series Editor, Mitchell, John C., Series Editor, Naor, Moni, Series Editor, Pandu Rangan, C., Series Editor, Steffen, Bernhard, Series Editor, Terzopoulos, Demetri, Series Editor, Tygar, Doug, Series Editor, Weikum, Gerhard, Series Editor, Mouhoub, Malek, editor, Sadaoui, Samira, editor, Ait Mohamed, Otmane, editor, and Ali, Moonis, editor
- Published
- 2018
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6. Solving the MCDP Using a League Championship Algorithm
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Soto, Ricardo, Crawford, Broderick, Olivares, Rodrigo, Romero Fernández, Jaime, Hutchison, David, Series Editor, Kanade, Takeo, Series Editor, Kittler, Josef, Series Editor, Kleinberg, Jon M., Series Editor, Mattern, Friedemann, Series Editor, Mitchell, John C., Series Editor, Naor, Moni, Series Editor, Pandu Rangan, C., Series Editor, Steffen, Bernhard, Series Editor, Terzopoulos, Demetri, Series Editor, Tygar, Doug, Series Editor, Weikum, Gerhard, Series Editor, Mouhoub, Malek, editor, Sadaoui, Samira, editor, Ait Mohamed, Otmane, editor, and Ali, Moonis, editor
- Published
- 2018
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7. Intelligent Learning-Based Methods for Determining the Ideal Team Size in Agile Practices.
- Author
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Olivares, Rodrigo, Noel, Rene, Guzmán, Sebastián M., Miranda, Diego, and Munoz, Roberto
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AGILE software development , *COMPUTER software development , *MACHINE learning , *METAHEURISTIC algorithms , *TEAMS - Abstract
One of the significant challenges in scaling agile software development is organizing software development teams to ensure effective communication among members while equipping them with the capabilities to deliver business value independently. A formal approach to address this challenge involves modeling it as an optimization problem: given a professional staff, how can they be organized to optimize the number of communication channels, considering both intra-team and inter-team channels? In this article, we propose applying a set of bio-inspired algorithms to solve this problem. We introduce an enhancement that incorporates ensemble learning into the resolution process to achieve nearly optimal results. Ensemble learning integrates multiple machine-learning strategies with diverse characteristics to boost optimizer performance. Furthermore, the studied metaheuristics offer an excellent opportunity to explore their linear convergence, contingent on the exploration and exploitation phases. The results produce more precise definitions for team sizes, aligning with industry standards. Our approach demonstrates superior performance compared to the traditional versions of these algorithms. [ABSTRACT FROM AUTHOR]
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- 2024
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8. Resolving the Manufacturing Cell Design Problem Using the Flower Pollination Algorithm
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Soto, Ricardo, Crawford, Broderick, Olivares, Rodrigo, De Conti, Michele, Rubio, Ronald, Almonacid, Boris, Niklander, Stefanie, Hutchison, David, Series editor, Kanade, Takeo, Series editor, Kittler, Josef, Series editor, Kleinberg, Jon M., Series editor, Mattern, Friedemann, Series editor, Mitchell, John C., Series editor, Naor, Moni, Series editor, Pandu Rangan, C., Series editor, Steffen, Bernhard, Series editor, Terzopoulos, Demetri, Series editor, Tygar, Doug, Series editor, Weikum, Gerhard, Series editor, Sombattheera, Chattrakul, editor, Stolzenburg, Frieder, editor, Lin, Fangzhen, editor, and Nayak, Abhaya, editor
- Published
- 2016
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9. The Complexity of Designing and Implementing Metaheuristics
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Soto, Ricardo, Crawford, Broderick, Olivares, Rodrigo, Galleguillos, Cristian, Crawford, Kathleen, Johnson, Franklin, Paredes, Fernando, and Stephanidis, Constantine, editor
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- 2015
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10. A Binary Cuckoo Search Algorithm for Solving the Set Covering Problem
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Soto, Ricardo, Crawford, Broderick, Olivares, Rodrigo, Barraza, Jorge, Johnson, Franklin, Paredes, Fernando, Hutchison, David, Series editor, Kanade, Takeo, Series editor, Kittler, Josef, Series editor, Kleinberg, Jon M., Series editor, Mattern, Friedemann, Series editor, Mitchell, John C., Series editor, Naor, Moni, Series editor, Pandu Rangan, C., Series editor, Steffen, Bernhard, Series editor, Terzopoulos, Demetri, Series editor, Tygar, Doug, Series editor, Weikum, Gerhard, Series editor, Ferrández Vicente, José Manuel, editor, Álvarez-Sánchez, José Ramón, editor, de la Paz López, Félix, editor, Toledo-Moreo, Fco. Javier, editor, and Adeli, Hojjat, editor
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- 2015
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11. Dynamic Population on Bio-Inspired Algorithms Using Machine Learning for Global Optimization.
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Caselli, Nicolás, Soto, Ricardo, Crawford, Broderick, Valdivia, Sergio, Chicata, Elizabeth, and Olivares, Rodrigo
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GLOBAL optimization ,METAHEURISTIC algorithms ,MACHINE learning ,PARTICLE swarm optimization ,ALGORITHMS ,SEARCH algorithms - Abstract
In the optimization field, the ability to efficiently tackle complex and high-dimensional problems remains a persistent challenge. Metaheuristic algorithms, with a particular emphasis on their autonomous variants, are emerging as promising tools to overcome this challenge. The term "autonomous" refers to these variants' ability to dynamically adjust certain parameters based on their own outcomes, without external intervention. The objective is to leverage the advantages and characteristics of an unsupervised machine learning clustering technique to configure the population parameter with autonomous behavior, and emphasize how we incorporate the characteristics of search space clustering to enhance the intensification and diversification of the metaheuristic. This allows dynamic adjustments based on its own outcomes, whether by increasing or decreasing the population in response to the need for diversification or intensification of solutions. In this manner, it aims to imbue the metaheuristic with features for a broader search of solutions that can yield superior results. This study provides an in-depth examination of autonomous metaheuristic algorithms, including Autonomous Particle Swarm Optimization, Autonomous Cuckoo Search Algorithm, and Autonomous Bat Algorithm. We submit these algorithms to a thorough evaluation against their original counterparts using high-density functions from the well-known CEC LSGO benchmark suite. Quantitative results revealed performance enhancements in the autonomous versions, with Autonomous Particle Swarm Optimization consistently outperforming its peers in achieving optimal minimum values. Autonomous Cuckoo Search Algorithm and Autonomous Bat Algorithm also demonstrated noteworthy advancements over their traditional counterparts. A salient feature of these algorithms is the continuous nature of their population, which significantly bolsters their capability to navigate complex and high-dimensional search spaces. However, like all methodologies, there were challenges in ensuring consistent performance across all test scenarios. The intrinsic adaptability and autonomous decision making embedded within these algorithms herald a new era of optimization tools suited for complex real-world challenges. In sum, this research accentuates the potential of autonomous metaheuristics in the optimization arena, laying the groundwork for their expanded application across diverse challenges and domains. We recommend further explorations and adaptations of these autonomous algorithms to fully harness their potential. [ABSTRACT FROM AUTHOR]
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- 2024
- Full Text
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12. Online control of enumeration strategies via bat algorithm and black hole optimization
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Soto, Ricardo, Crawford, Broderick, Olivares, Rodrigo, Niklander, Stefanie, Johnson, Franklin, Paredes, Fernando, and Olguín, Eduardo
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- 2017
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13. A self-adaptive biogeography-based algorithm to solve the set covering problem.
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Crawford, Broderick, Soto, Ricardo, Olivares, Rodrigo, Riquelme, Luis, Astorga, Gino, Johnson, Franklin, Cortés, Enrique, Castro, Carlos, and Paredes, Fernando
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SELF-adaptive software ,PROCESS optimization ,ALGORITHMS ,METAHEURISTIC algorithms ,INDUSTRIAL applications - Abstract
Using the approximate algorithms, we are faced with the problem of determining the appropriate values of their input parameters, which is always a complex task and is considered an optimization problem. In this context, incorporating online control parameters is a very interesting issue. The aim is to vary the parameters during the run so that the studied algorithm can provide the best convergence rate and, thus, achieve the best performance. In this paper, we compare the performance of a self-adaptive approach for the biogeography-based optimization algorithm using the mutation rate parameter with respect to its original version and other heuristics. This work proposes altering some parameters of the metaheuristic according to its exhibited efficiency. To test this approach, we solve the set covering problem, which is a classical optimization benchmark with many industrial applications such as line balancing production, crew scheduling, service installation, databases, among several others. We illustrate encouraging experimental results, where the proposed approach is capable of reaching various global optimums for a well-known instance set taken from the Beasleys OR-Library, and sometimes, it improves the results obtained by the original version of the algorithm. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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14. Using autonomous search for solving constraint satisfaction problems via new modern approaches.
- Author
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Soto, Ricardo, Crawford, Broderick, Olivares, Rodrigo, Galleguillos, Cristian, Castro, Carlos, Johnson, Franklin, Paredes, Fernando, and Norero, Enrique
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CONSTRAINT programming ,CONSTRAINT satisfaction ,MATHEMATICAL optimization ,BIOLOGICALLY inspired computing ,METAHEURISTIC algorithms - Abstract
Constraint Programming is a powerful paradigm which allows the resolution of many complex problems, such as scheduling, planning, and configuration. These problems are defined by a set of variables and a set of constraints. Each variable has non-empty domain of possible value and each constraint involves some subset of the variables and specifies the allowable combinations of values for that subset. The resolution of these problems is carried out by a constraint satisfaction solver which explores a search tree of potential solutions. This exploration is controlled by the enumeration strategy, which is responsible for choosing the order in which variables and values are selected to generate the potential solution. There exist different ways to perform this selection, and depending on the quality of this decision, the efficiency of the solving process may dramatically vary. Autonomous search is a particular case of adaptive systems that aims at improving its solving performance by adapting itself to the problem at hand without manual configuration of an expert user. The goal is to improve their solving performance by modifying and adjusting themselves, either by self-adaptation or by supervised adaptation. This approach has been effectively applied to different optimization and satisfaction techniques such as constraint programming, metaheuristics, and SAT. In this paper, we present a new Autonomous Search approach for constraint programming based on four modern bio-inspired metaheuristics. The goal of those metaheuristics is to optimize the self-tuning phase of the constraint programming search process. We illustrate promising results, where the proposed approach is able to efficiently solve several well-known constraint satisfaction problems. [ABSTRACT FROM AUTHOR]
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- 2016
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15. A Self-Adaptive Cuckoo Search Algorithm Using a Machine Learning Technique.
- Author
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Caselli, Nicolás, Soto, Ricardo, Crawford, Broderick, Valdivia, Sergio, and Olivares, Rodrigo
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SEARCH algorithms ,MACHINE learning ,CLUSTER analysis (Statistics) ,ALGORITHMS - Abstract
Metaheuristics are intelligent problem-solvers that have been very efficient in solving huge optimization problems for more than two decades. However, the main drawback of these solvers is the need for problem-dependent and complex parameter setting in order to reach good results. This paper presents a new cuckoo search algorithm able to self-adapt its configuration, particularly its population and the abandon probability. The self-tuning process is governed by using machine learning, where cluster analysis is employed to autonomously and properly compute the number of agents needed at each step of the solving process. The goal is to efficiently explore the space of possible solutions while alleviating human effort in parameter configuration. We illustrate interesting experimental results on the well-known set covering problem, where the proposed approach is able to compete against various state-of-the-art algorithms, achieving better results in one single run versus 20 different configurations. In addition, the result obtained is compared with similar hybrid bio-inspired algorithms illustrating interesting results for this proposal. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
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16. Clustering-Based Binarization Methods Applied to the Crow Search Algorithm for 0/1 Combinatorial Problems.
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Valdivia, Sergio, Soto, Ricardo, Crawford, Broderick, Caselli, Nicolás, Paredes, Fernando, Castro, Carlos, and Olivares, Rodrigo
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SEARCH algorithms ,ALGORITHMS ,BIOLOGICALLY inspired computing ,REAL variables ,TABU search algorithm - Abstract
Metaheuristics are smart problem solvers devoted to tackling particularly large optimization problems. During the last 20 years, they have largely been used to solve different problems from the academic as well as from the real-world. However, most of them have originally been designed for operating over real domain variables, being necessary to tailor its internal core, for instance, to be effective in a binary space of solutions. Various works have demonstrated that this internal modification, known as binarization, is not a simple task, since the several existing binarization ways may lead to very different results. This of course forces the user to implement and analyze a large list of binarization schemas for reaching good results. In this paper, we explore two efficient clustering methods, namely KMeans and DBscan to alter a metaheuristic in order to improve it, and thus do not require on the knowledge of an expert user for identifying which binarization strategy works better during the run. Both techniques have widely been applied to solve clustering problems, allowing us to exploit useful information gathered during the search to efficiently control and improve the binarization process. We integrate those techniques to a recent metaheuristic called Crow Search, and we conduct experiments where KMeans and DBscan are contrasted to 32 different binarization methods. The results show that the proposed approaches outperform most of the binarization strategies for a large list of well-known optimization instances. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
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