Fr. 56.90

Influence Models in Group Decision-Making

Inglese · Copertina rigida

Spedizione di solito entro 6 a 7 settimane

Descrizione

Ulteriori informazioni

This book examines influence among decision-makers in group decision-making. It is quite common that people influence and are influenced by each other in group decision-making. Likewise, artificial intelligences can influence and be influenced by each other in interaction or collaboration, and both a person and an artificial intelligence can be called an agent. The author explores how humans or artificial intelligences can interact with and influence each other during the decision-making process, where such influence can reshape the outcome of the group decision. With an interdisciplinary approach, various applications are considered including: computer science (distributed computing, distributed artificial intelligence, particularly multi-agent system); economics and management (joint-stock company voting); and politics (domestic elections and international organization decision-making). The book presents settings of group decision-making where agents preferences/choices are influenced (and thus changed) by each other. As the influence of reality faced by an agent usually comes from more than one agent simultaneously, the author provides both cardinal and ordinal approaches, building social influence functions and a matrix influence function, to address multiple sources of influence in group decision-making. To better describe the complex influence in reality, the author provides a framework of the three levels of influence and its mathematical models to address individual, coalitional, and structural influence and their mixed effects in the context of group decision-making. Even though it is not easy to address the influence of structures on an agent as the influencing subject and the influenced object are disparate, the former is the inter-relationships between agents while the latter is the preference/choice of a single agent. Furthermore, the author considers combinatorial and collective decision-making and provides a framework model of influence across multiple agents and issues.

Sommario

Introduction.- Background.- Social Influence Functions based on Social Choice.- Matrix Influence Function based on Ordering Matrix.- Graphical and Mathematical Expressions of the Three Levels of Influence.- Addressing Coalitional and Structural Influence: A Probabilistic Approach.- Multiple Sources of Influence across Agents and Issues.- Multiple Weighted Influences.- One Dominant Influence.- Discussion, Conclusion, and Future Work.

Info autore

Hang Luo, Ph.D., is a Tenured Associate Professor in the School of International Studies at Peking University. He holds a Ph.D. in Computer Science from Universite Paris VI, Paris, France and a Ph.D. in Management from Tsinghua University, Beijing, China. His research interests include decision theory, network analysis, and artificial intelligence (especially multi-agent system).

Riassunto

This book examines influence among decision-makers in group decision-making. It is quite common that people influence and are influenced by each other in group decision-making. Likewise, artificial intelligences can influence and be influenced by each other in interaction or collaboration, and both a person and an artificial intelligence can be called an agent. The author explores how humans or artificial intelligences can interact with and influence each other during the decision-making process, where such influence can reshape the outcome of the group decision. With an interdisciplinary approach, various applications are considered including: computer science (distributed computing, distributed artificial intelligence, particularly multi-agent system); economics and management (joint-stock company voting); and politics (domestic elections and international organization decision-making). The book presents settings of group decision-making where agents’ preferences/choices are influenced (and thus changed) by each other. As the influence of reality faced by an agent usually comes from more than one agent simultaneously, the author provides both cardinal and ordinal approaches, building social influence functions and a matrix influence function, to address multiple sources of influence in group decision-making. To better describe the complex influence in reality, the author provides a framework of the three levels of influence and its mathematical models to address individual, coalitional, and structural influence and their mixed effects in the context of group decision-making. Even though it is not easy to address the influence of structures on an agent as the influencing subject and the influenced object are disparate, the former is the inter-relationships between agents while the latter is the preference/choice of a single agent. Furthermore, the author considers combinatorial and collective decision-making and provides a framework model of influence across multiple agents and issues.

Dettagli sul prodotto

Autori Hang Luo
Editore Springer, Berlin
 
Lingue Inglese
Formato Copertina rigida
Pubblicazione 30.12.2025
 
EAN 9783032013514
ISBN 978-3-0-3201351-4
Pagine 104
Dimensioni 168 mm x 10 mm x 240 mm
Peso 322 g
Illustrazioni X, 104 p. 21 illus., 14 illus. in color.
Serie Synthesis Lectures on Computer Science
Categorie Scienze naturali, medicina, informatica, tecnica > Informatica, EDP > Informatica

Informatik, Unternehmensforschung, Artificial Intelligence, Evolution, Management: Entscheidungstheorie, computer science, Social Networks, Operations Research and Decision Theory, social influence, Multiagent Systems, Computer Application in Social and Behavioral Sciences, Social choice, Social evolution, multi-agent system, Influence Models, Group Decision

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