Inteligencia colectiva: enfoque para el análisis de redes
DOI:
https://doi.org/10.1016/j.estger.2014.01.014Palabras clave:
Inteligencia colectiva, Autoorganización, Red empresarialResumen
La revisión de la literatura anglosajona producida durante los últimos 16 años sobre inteligencia colectivay otras metaheurísticas permite la construcción del estado del arte de 3 de sus características: autoor-ganización, flexibilidad y robustez. Dicho recorrido teórico aporta a la comprensión de las posibilidadesde aplicación de la inteligencia colectiva no solo en especies sino en niveles de vida superiores comocomunidades y ecosistemas. Dado que en el largo plazo la flexibilidad y la robustez emergen de laautoorganización, se sugiere el estudio de los asuntos de esta última característica en redes empresaria-les (información, comunicación, liderazgo, potencial creativo, pertenencia, autonomía, acción colectiva,cooperación, interacción, libertad y diversidad), así como el análisis de redes soportado en grafos eindicadores.Descargas
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