Multi-agent modelling and analysis of the knowledge learning of a human-machine hybrid intelligent organization with human-machine trust

Machine learning (ML) technologies have changed the paradigm of knowledge discovery in organizations and transformed traditional organizational learning to human-machine hybrid intelligent organizational learning. However, the general distrust among humans towards knowledge derived from machine lear...

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Main Authors: Chaogai Xue, Haoxiang Zhang, Haiwang Cao
Format: Article
Language:English
Published: Taylor & Francis Group 2024-12-01
Series:Systems Science & Control Engineering
Subjects:
Online Access:https://www.tandfonline.com/doi/10.1080/21642583.2024.2343301
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author Chaogai Xue
Haoxiang Zhang
Haiwang Cao
author_facet Chaogai Xue
Haoxiang Zhang
Haiwang Cao
author_sort Chaogai Xue
collection DOAJ
description Machine learning (ML) technologies have changed the paradigm of knowledge discovery in organizations and transformed traditional organizational learning to human-machine hybrid intelligent organizational learning. However, the general distrust among humans towards knowledge derived from machine learning has hindered effective knowledge exchange between humans and machines, thereby compromising the efficiency of human-machine hybrid intelligent organizational learning. To explore this issue, we used multi-agent simulation to construct a knowledge learning model of a human-machine hybrid intelligent organization with human-machine trust. The simulation showed that whether human-machine trust has a positive effect on knowledge level depends on the initial input and the magnitude of the effect depends on the human learning propensity (exploration and exploitation). When humans reconfigure machine learning excessively, whether human-machine trust has a positive effect on the knowledge level depends on human learning propensity (exploration and exploitation). Maintaining appropriate human-machine trust in turbulent environments assists humans in integrating diverse knowledge to meet changing knowledge needs. Our study extends the human-machine hybrid intelligence organizational learning model by modeling human-machine trust. It will assist managers in effectively designing the most economical level of human-machine trust, thereby enhancing the efficiency of human-machine collaboration in human-machine hybrid intelligent organization.
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institution Kabale University
issn 2164-2583
language English
publishDate 2024-12-01
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spelling doaj-art-a2e8e2d83cb142e79e0301005b44302f2024-12-17T09:06:13ZengTaylor & Francis GroupSystems Science & Control Engineering2164-25832024-12-0112110.1080/21642583.2024.2343301Multi-agent modelling and analysis of the knowledge learning of a human-machine hybrid intelligent organization with human-machine trustChaogai Xue0Haoxiang Zhang1Haiwang Cao2School of Management, Zhengzhou University, Zhengzhou, People’s Republic of ChinaSchool of Management, Zhengzhou University, Zhengzhou, People’s Republic of ChinaCollege of intelligent Engineering, Zhengzhou University of Aeronautics, Zhengzhou, People’s Republic of ChinaMachine learning (ML) technologies have changed the paradigm of knowledge discovery in organizations and transformed traditional organizational learning to human-machine hybrid intelligent organizational learning. However, the general distrust among humans towards knowledge derived from machine learning has hindered effective knowledge exchange between humans and machines, thereby compromising the efficiency of human-machine hybrid intelligent organizational learning. To explore this issue, we used multi-agent simulation to construct a knowledge learning model of a human-machine hybrid intelligent organization with human-machine trust. The simulation showed that whether human-machine trust has a positive effect on knowledge level depends on the initial input and the magnitude of the effect depends on the human learning propensity (exploration and exploitation). When humans reconfigure machine learning excessively, whether human-machine trust has a positive effect on the knowledge level depends on human learning propensity (exploration and exploitation). Maintaining appropriate human-machine trust in turbulent environments assists humans in integrating diverse knowledge to meet changing knowledge needs. Our study extends the human-machine hybrid intelligence organizational learning model by modeling human-machine trust. It will assist managers in effectively designing the most economical level of human-machine trust, thereby enhancing the efficiency of human-machine collaboration in human-machine hybrid intelligent organization.https://www.tandfonline.com/doi/10.1080/21642583.2024.2343301Human-machine coordinationhuman-machine trustorganizational learningmulti-agent simulation
spellingShingle Chaogai Xue
Haoxiang Zhang
Haiwang Cao
Multi-agent modelling and analysis of the knowledge learning of a human-machine hybrid intelligent organization with human-machine trust
Systems Science & Control Engineering
Human-machine coordination
human-machine trust
organizational learning
multi-agent simulation
title Multi-agent modelling and analysis of the knowledge learning of a human-machine hybrid intelligent organization with human-machine trust
title_full Multi-agent modelling and analysis of the knowledge learning of a human-machine hybrid intelligent organization with human-machine trust
title_fullStr Multi-agent modelling and analysis of the knowledge learning of a human-machine hybrid intelligent organization with human-machine trust
title_full_unstemmed Multi-agent modelling and analysis of the knowledge learning of a human-machine hybrid intelligent organization with human-machine trust
title_short Multi-agent modelling and analysis of the knowledge learning of a human-machine hybrid intelligent organization with human-machine trust
title_sort multi agent modelling and analysis of the knowledge learning of a human machine hybrid intelligent organization with human machine trust
topic Human-machine coordination
human-machine trust
organizational learning
multi-agent simulation
url https://www.tandfonline.com/doi/10.1080/21642583.2024.2343301
work_keys_str_mv AT chaogaixue multiagentmodellingandanalysisoftheknowledgelearningofahumanmachinehybridintelligentorganizationwithhumanmachinetrust
AT haoxiangzhang multiagentmodellingandanalysisoftheknowledgelearningofahumanmachinehybridintelligentorganizationwithhumanmachinetrust
AT haiwangcao multiagentmodellingandanalysisoftheknowledgelearningofahumanmachinehybridintelligentorganizationwithhumanmachinetrust