8 results on '"Ortiz-Bayliss, José C."'
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2. Algorithm selection for solving educational timetabling problems
- Author
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de la Rosa-Rivera, Felipe, Nunez-Varela, Jose I., Ortiz-Bayliss, José C., and Terashima-Marín, Hugo
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- 2021
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3. Selecting meta-heuristics for solving vehicle routing problems with time windows via meta-learning
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Gutierrez-Rodríguez, Andres E., Conant-Pablos, Santiago E., Ortiz-Bayliss, José C., and Terashima-Marín, Hugo
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- 2019
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4. Leveraging a Neuroevolutionary Approach for Classifying Violent Behavior in Video.
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Flores-Munguía, Carlos, Ortiz-Bayliss, José C., and Terashima-Marín, Hugo
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VIOLENCE , *ARTIFICIAL neural networks , *POSE estimation (Computer vision) , *VIDEO surveillance , *GENETIC algorithms , *DEEP learning - Abstract
Security has become a critical issue for complex and expensive systems and day-to-day situations. In this regard, the analysis of surveillance cameras is a critical issue usually restricted to the number of people devoted to such a task, their knowledge and judgment. Nonetheless, different approaches have arisen to automate this task in recent years. These approaches are mainly based on machine learning and benefit from developing neural networks capable of extracting underlying information from input videos. Despite how competent those networks have proved to be, developers must face the challenging task of defining both the architecture and hyperparameters that allow such networks to work adequately and optimize the use of computational resources. In short, this work proposes a model that generates, through a genetic algorithm, neural networks for behavior classification within videos. Two types of neural networks evolved as part of this work, shallow and deep, which are structured on dense and 3D convolutional layers. Each network requires a particular type of input data: the evolution of the pose of people in the video and video sequences, respectively. Shallow neural networks use a direct encoding approach to map each part of the chromosome into a phenotype. In contrast, deep neural networks use indirect encoding, blueprints representing entire networks, and modules to depict layers and their connections. Our approach obtained relevant results when tested on the Kranok-NV dataset and evaluated with standard metrics used for similar classification tasks. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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5. Global Optimisation through Hyper-Heuristics: Unfolding Population-Based Metaheuristics.
- Author
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Cruz-Duarte, Jorge M., Ortiz-Bayliss, José C., Amaya, Ivan, and Pillay, Nelishia
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SIMULATED annealing ,METAHEURISTIC algorithms ,ALGORITHMS ,OVERPOPULATION ,HEURISTIC - Abstract
Optimisation has been with us since before the first humans opened their eyes to natural phenomena that inspire technological progress. Nowadays, it is quite hard to find a solver from the overpopulation of metaheuristics that properly deals with a given problem. This is even considered an additional problem. In this work, we propose a heuristic-based solver model for continuous optimisation problems by extending the existing concepts present in the literature. We name such solvers 'unfolded' metaheuristics (uMHs) since they comprise a heterogeneous sequence of simple heuristics obtained from delegating the control operator in the standard metaheuristic scheme to a high-level strategy. Therefore, we tackle the Metaheuristic Composition Optimisation Problem by tailoring a particular uMH that deals with a specific application. We prove the feasibility of this model via a two-fold experiment employing several continuous optimisation problems and a collection of diverse population-based operators with fixed dimensions from ten well-known metaheuristics in the literature. As a high-level strategy, we utilised a hyper-heuristic based on Simulated Annealing. Results demonstrate that our proposed approach represents a very reliable alternative with a low computational cost for tackling continuous optimisation problems with a tailored metaheuristic using a set of agents. We also study the implication of several parameters involved in the uMH model and their influence over the solver performance. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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6. A General Framework Based on Machine Learning for Algorithm Selection in Constraint Satisfaction Problems.
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Ortiz-Bayliss, José C., Amaya, Ivan, Cruz-Duarte, Jorge M., Gutierrez-Rodriguez, Andres E., Conant-Pablos, Santiago E., Terashima-Marín, Hugo, and Tomida, Akemi Galvez
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MACHINE learning ,CONSTRAINT algorithms ,CONSTRAINT satisfaction ,REPRODUCIBLE research ,LEARNING modules ,LOGISTIC regression analysis - Abstract
Many of the works conducted on algorithm selection strategies—methods that choose a suitable solving method for a particular problem—start from scratch since only a few investigations on reusable components of such methods are found in the literature. Additionally, researchers might unintentionally omit some implementation details when documenting the algorithm selection strategy. This makes it difficult for others to reproduce the behavior obtained by such an approach. To address these problems, we propose to rely on existing techniques from the Machine Learning realm to speed-up the generation of algorithm selection strategies while improving the modularity and reproducibility of the research. The proposed solution model is implemented on a domain-independent Machine Learning module that executes the core mechanism of the algorithm selection task. The algorithm selection strategies produced in this work are implemented and tested rapidly compared against the time it would take to build a similar approach from scratch. We produce four novel algorithm selectors based on Machine Learning for constraint satisfaction problems to verify our approach. Our data suggest that these algorithms outperform the best performing algorithm on a set of test instances. For example, the algorithm selectors Multiclass Neural Network (MNN) and Multiclass Logistic Regression (MLR), powered by a neural network and linear regression, respectively, reduced the search cost (in terms of consistency checks) of the best performing heuristic (KAPPA), on average, by 49% for the instances considered for this work. [ABSTRACT FROM AUTHOR]
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- 2021
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7. Criminal Intention Detection at Early Stages of Shoplifting Cases by Using 3D Convolutional Neural Networks.
- Author
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Martínez-Mascorro, Guillermo A., Abreu-Pederzini, José R., Ortiz-Bayliss, José C., Garcia-Collantes, Angel, and Terashima-Marín, Hugo
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CONVOLUTIONAL neural networks ,SHOPLIFTING ,VIDEO surveillance ,PUNISHMENT ,CAMCORDERS ,CRIME prevention - Abstract
Crime generates significant losses, both human and economic. Every year, billions of dollars are lost due to attacks, crimes, and scams. Surveillance video camera networks generate vast amounts of data, and the surveillance staff cannot process all the information in real-time. Human sight has critical limitations. Among those limitations, visual focus is one of the most critical when dealing with surveillance. For example, in a surveillance room, a crime can occur in a different screen segment or on a distinct monitor, and the surveillance staff may overlook it. Our proposal focuses on shoplifting crimes by analyzing situations that an average person will consider as typical conditions, but may eventually lead to a crime. While other approaches identify the crime itself, we instead model suspicious behavior—the one that may occur before the build-up phase of a crime—by detecting precise segments of a video with a high probability of containing a shoplifting crime. By doing so, we provide the staff with more opportunities to act and prevent crime. We implemented a 3DCNN model as a video feature extractor and tested its performance on a dataset composed of daily action and shoplifting samples. The results are encouraging as the model correctly classifies suspicious behavior in most of the scenarios where it was tested. For example, when classifying suspicious behavior, the best model generated in this work obtains precision and recall values of 0.8571 and 1 in one of the test scenarios, respectively. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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8. Towards a Generalised Metaheuristic Model for Continuous Optimisation Problems.
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Cruz-Duarte, Jorge M., Ortiz-Bayliss, José C., Amaya, Iván, Shi, Yong, Terashima-Marín, Hugo, and Pillay, Nelishia
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METAHEURISTIC algorithms , *LANDSCAPES , *PROBLEM solving , *HEURISTIC - Abstract
Metaheuristics have become a widely used approach for solving a variety of practical problems. The literature is full of diverse metaheuristics based on outstanding ideas and with proven excellent capabilities. Nonetheless, oftentimes metaheuristics claim novelty when they are just recombining elements from other methods. Hence, the need for a standard metaheuristic model is vital to stop the current frenetic tendency of proposing methods chiefly based on their inspirational source. This work introduces a first step to a generalised and mathematically formal metaheuristic model, which can be used for studying and improving them. This model is based on a scheme of simple heuristics, which perform as building blocks that can be modified depending on the application. For this purpose, we define and detail all components and concepts of a metaheuristic (i.e., its search operators), such as heuristics. Furthermore, we also provide some ideas to take into account for exploring other search operator configurations in the future. To illustrate the proposed model, we analyse search operators from four well-known metaheuristics employed in continuous optimisation problems as a proof-of-concept. From them, we derive 20 different approaches and use them for solving some benchmark functions with different landscapes. Data show the remarkable capability of our methodology for building metaheuristics and detecting which operator to choose depending on the problem to solve. Moreover, we outline and discuss several future extensions of this model to various problem and solver domains. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
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