Fr. 215.00

Computational Modeling of Multilevel Organisational Learning and Its Control Using Self-modeling Network Models

Inglese · Tascabile

Spedizione di solito entro 2 a 3 settimane (il titolo viene stampato sull'ordine)

Descrizione

Ulteriori informazioni

Although there is much literature on organisational learning, mathematical formalisation and computational simulation, there is no literature that uses mathematical modelling and simulation to represent and explore different facets of multilevel learning. This book provides an overview of recent work on mathematical formalisation and computational simulation of multilevel organisational learning by exploiting the possibilities of self-modeling network models to address it. 

  • This is the first book addressing mathematical formalisation and computational modeling of multilevel organisational learning in a systematic, principled manner.  
  • A self-modeling network modeling approach from AI and Network Science is used where in a reflective manner some of the network nodes (called self-model nodes) represent parts of the network's own network structure characteristics. 
  • This is supported by a dedicated software environment allowing to design and implement (higher-order) adaptive network models by specifying them in a conceptual manner at a high level of abstraction in a standard table format, without any need of algorithmic specification or programming. 
  • This modeling approach allows to model the development of knowledge in an organisational setting in a neatly structured manner at three different levels for the usage, adaptation and control, respectively, of the underlying mental models.  
  • Several examples of realistic cases of multilevel organisational learning are used to illustrate the approach.  
  • Crucial concepts such as the aggregation of mental models to form shared mental models out of individual mental models are addressed extensively. 
  • It is shown how to model context-sensitive control of organisational learning taking into account a wide variety of context factors, for example relating to levels of expertise of individuals or to leadership styles of managers involved. 
  • Mathematical equilibrium analysis of models of organisational learning is also addressed, among others allowing verification of correctness of the implemental models in comparison to their conceptual design. 
  • Chapters in this book also contribute to the Management and Business Sciences research by demonstrating how computational modeling can be used to capture complex management phenomena such as multilevel organizational learning.   
  • This book has a potential implication for practice by demonstrating how computational modeling can be used to capture learning scenarios, which then provide a basis for more informed managerial decisions.  


Sommario

On Computational Analysis and Simulation for Multilevel Organizational Learning.- Multilevel Organisational Learning.- Modeling Dynamics, Adaptivity and Control by Self-Modeling Networks.- Modeling Mental Models: their Use, Adaptation and Control.- From Conceptual to Computational Mechanisms for Multilevel Organisational Learning.- Using Self-Modeling Networks to Model Organisational Learning.

Dettagli sul prodotto

Con la collaborazione di Gülay Canbalo¿lu (Editore), Gülay Canbaloglu (Editore), Jan Treur (Editore), Anna Wiewiora (Editore)
Editore Springer, Berlin
 
Lingue Inglese
Formato Tascabile
Pubblicazione 18.06.2024
 
EAN 9783031287374
ISBN 978-3-0-3128737-4
Pagine 515
Dimensioni 155 mm x 24 mm x 235 mm
Peso 887 g
Illustrazioni XI, 515 p. 285 illus., 278 illus. in color.
Serie Studies in Systems, Decision and Control
Categoria Scienze naturali, medicina, informatica, tecnica > Tecnica > Tematiche generali, enciclopedie

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