TY - GEN
T1 - The Influence of Interdependence on Trust Calibration in Human-Machine Teams
AU - Verhagen, Ruben S.
AU - Marcu, Alexandra
AU - Neerincx, Mark A.
AU - Tielman, Myrthe L.
PY - 2024
Y1 - 2024
N2 - In human-machine teams, the strengths and weaknesses of both team members result in dependencies, opportunities, and requirements to collaborate. Managing these interdependence relationships is crucial for teamwork, as it is argued that they facilitate accurate trust calibration. Unfortunately, empirical research on the influence of interdependence on trust calibration during human-machine teamwork is lacking. Therefore, we conducted an experiment (n=80) to study the effect of interdependence relationships (complete independence, complementary independence, optional interdependence, required interdependence) on human-machine trust calibration. Participants collaborated with a virtual agent during a simulated search and rescue task in teams characterized by one of the four interdependencies. A machine-induced trust violation was included in the task to facilitate dynamic trust calibration. Results show that the interdependence relationships during human-machine teamwork influence perceived trust calibration over time. Only in the teams with joint actions (optional and required interdependence) does perceived trust in the machine not recover to its initial pre-violated value. However, results show that the correlation between perceived trust in the machine and machine trustworthiness is strongest in these teams with joint actions, suggesting a more accurate trust calibration process. Overall, our findings provide some first evidence that interdependence relationships during human-machine teamwork influence human-machine trust calibration.
AB - In human-machine teams, the strengths and weaknesses of both team members result in dependencies, opportunities, and requirements to collaborate. Managing these interdependence relationships is crucial for teamwork, as it is argued that they facilitate accurate trust calibration. Unfortunately, empirical research on the influence of interdependence on trust calibration during human-machine teamwork is lacking. Therefore, we conducted an experiment (n=80) to study the effect of interdependence relationships (complete independence, complementary independence, optional interdependence, required interdependence) on human-machine trust calibration. Participants collaborated with a virtual agent during a simulated search and rescue task in teams characterized by one of the four interdependencies. A machine-induced trust violation was included in the task to facilitate dynamic trust calibration. Results show that the interdependence relationships during human-machine teamwork influence perceived trust calibration over time. Only in the teams with joint actions (optional and required interdependence) does perceived trust in the machine not recover to its initial pre-violated value. However, results show that the correlation between perceived trust in the machine and machine trustworthiness is strongest in these teams with joint actions, suggesting a more accurate trust calibration process. Overall, our findings provide some first evidence that interdependence relationships during human-machine teamwork influence human-machine trust calibration.
KW - human-machine teamwork
KW - interdependence
KW - trust calibration
UR - http://www.scopus.com/inward/record.url?scp=85198754030&partnerID=8YFLogxK
U2 - 10.3233/FAIA240203
DO - 10.3233/FAIA240203
M3 - Conference contribution
AN - SCOPUS:85198754030
T3 - Frontiers in Artificial Intelligence and Applications
SP - 300
EP - 314
BT - HHAI 2024: Hybrid AI Systems for the Social Good
A2 - Lorig, Fabian
A2 - Tucker, Jason
A2 - Dahlgren Lindström, Adam
A2 - Dignum, Frank
A2 - Murukannaiah, Pradeep
A2 - Theodorou, Andreas
A2 - Yolum, Pinar
PB - IOS Press
CY - Amsterdam
T2 - 3rd International Conference on Hybrid Human-Artificial Intelligence
Y2 - 10 June 2024 through 14 June 2024
ER -