Monash University
Browse
5509363_ChmaitThesis.pdf (4.57 MB)

Understanding Collective Intelligence in Agent-Based Systems: an Information-Theoretic Approach to the Measurement and Comparison of Intelligence in Groups

Download (4.57 MB)
thesis
posted on 2017-11-01, 23:22 authored by NADER CHMAIT
This research aims to better understand the phenomenon of collective intelligence across the three cognitive systems: human, animal and machine. Major characteristics shaping the spread of intelligence in groups are identified and their influences on group performance are measured using an intelligence test. We address how much groups, implementing different communication and co-operation protocols, can outperform individuals by. Moreover, a new predictive model for the accuracy of artificial intelligence (AI) agents is presented. Finally, using notions from information theory, the studies of intelligence in AI are linked to other disciplines, notably business decision-making and management.

History

Campus location

Australia

Principal supervisor

David L Dowe

Additional supervisor 1

David G. Green

Additional supervisor 2

Yuan-Fang Li

Year of Award

2017

Department, School or Centre

Information Technology (Monash University Clayton)

Course

Doctor of Philosophy

Degree Type

DOCTORATE

Faculty

Faculty of Information Technology