1. bookVolumen 22 (2022): Edición 4 (November 2022)
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Revista
eISSN
1314-4081
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13 Mar 2012
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4 veces al año
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Hybrid Feature Selection Method for Intrusion Detection Systems Based on an Improved Intelligent Water Drop Algorithm

Publicado en línea: 10 Nov 2022
Volumen & Edición: Volumen 22 (2022) - Edición 4 (November 2022)
Páginas: 73 - 90
Recibido: 03 Oct 2022
Aceptado: 18 Oct 2022
Detalles de la revista
License
Formato
Revista
eISSN
1314-4081
Primera edición
13 Mar 2012
Calendario de la edición
4 veces al año
Idiomas
Inglés

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