ant colony systems
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IEEE Access ◽  
2021 ◽  
pp. 1-1
Author(s):  
Muhammad Aria Rajasa Pohan ◽  
Bambang Riyanto Trilaksono ◽  
Sigit Puji Santosa ◽  
Arief Syaichu Rohman

2020 ◽  
Vol 24 (5) ◽  
pp. 3141-3154
Author(s):  
Luis Fernando de Mingo López ◽  
Nuria Gómez Blas ◽  
Clemencio Morales Lucas

2020 ◽  
Vol 31 (01) ◽  
pp. 103-116
Author(s):  
Luis Fernando de Mingo López ◽  
Nuria Gómez Blas ◽  
Angel Luis Castellanos Peñuela ◽  
Juan Bautista Castellanos Peñuela

Ant Colony Systems have been widely employed in optimization issues primarily focused on path finding optimization, such as Traveling Salesman Problem. The main advantage lies in the choice of the edge to be explored, defined using the idea of pheromone. This article proposes the use of Ant Colony Systems to explore a Backus-Naur form grammar whose elements are solutions to a given problem. Similar studies, without using Ant Colonies, have been used to solve optimization problems, such as Grammatical Swarm (based on Particle Swarm Optimization) and Grammatical Evolution (based on Genetic Algorithms). Proposed algorithm opens the way to a new branch of research in Swarm Intelligence, which until now has been almost non-existent, using ant colony algorithms to solve problems described by a grammar.


Author(s):  
Manuela Graf ◽  
Marc Poy ◽  
Simon Bischof ◽  
Rolf Dornberger ◽  
Thomas Hanne

Author(s):  
Gautam Srivastava ◽  
◽  
Mykel Shumay ◽  
Evan Citulsky ◽  
◽  
...  

Author(s):  
Paula Vergara ◽  
José R. Villar ◽  
Enrique De La Cal ◽  
Manuel Menéndez ◽  
Javier Sedano

Wearable devices have promoted the application of Human Activity Recognition to the development of techniques for the assessment or diagnosing of illnesses and seizures, among other applications. For instance, the use of tri-axial accelerometry (3DACM) to detect abnormal and sudden movements has been introduced in the epileptic seizure recognition. In a previous research, Fuzzy Rule Based Classifiers (FRBC) have been found valid for the detection of epileptic convulsions; however, Ant Colony Systems learned FRBC performed with a high variability depending on the training data. In this study, we cope with this problem by the selection of a suitable partitioning method that has been extended to generate Fuzzy partitions. The comparison with the previous obtained results shows the fuzzy partitioning does not improve the overall performance in terms of error but highly reduces the variability in the performance of the obtained models, which allows us to obtain general models.


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