Title
Evolutionary learning in networked multi-agent organizations
Abstract
This study proposes a simple computational model of evolutionary learning in organizations informed by genetic algorithms. Agents who interact only with neighboring partners seek to solve a given problem. We explore the effects of task specialization (transmitters and innovators), organizational culture, and network topology on the efficiency of collective learning. Simulation results indicate that organizations without innovators tend to get stuck in suboptimal equilibria, regardless of organizational culture and network topology. The effect of organizational culture of cherishing the recombination of existing answers is positive if there are no innovators because it helps agents escape from suboptimality, and otherwise negative because too much creativity is introduced into organizations. We also find that agents in highly clustered networks reach local consensus more rapidly, whereas agents are more likely to find the right solution in small-world networks and random networks with relatively short path lengths. The implications of local consensus for organizational stress are discussed.
Year
DOI
Venue
2010
10.1145/1830761.1830846
GECCO (Companion)
Keywords
Field
DocType
small-world network,neighboring partner,collective learning,evolutionary learning,genetic algorithm,network topology,local consensus,organizational culture,networked multi-agent organization,organizational stress,random network,genetic algorithms,netlogo,small world network,computer model
Organizational network analysis,Collaborative learning,Computer science,Organizational culture,Knowledge management,NetLogo,Network topology,Artificial intelligence,Evolutionary learning,Creativity,Machine learning,Genetic algorithm
Conference
Citations 
PageRank 
References 
0
0.34
1
Authors
1
Name
Order
Citations
PageRank
Jae Woo Kim1289.47