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Autores principales: Chang, Mai Lee, Baraka, Kim, Trafton, Greg, Vazhekatt, Zach Lalu, Thomaz, Andrea Lockerd
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2505.16171
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author Chang, Mai Lee
Baraka, Kim
Trafton, Greg
Vazhekatt, Zach Lalu
Thomaz, Andrea Lockerd
author_facet Chang, Mai Lee
Baraka, Kim
Trafton, Greg
Vazhekatt, Zach Lalu
Thomaz, Andrea Lockerd
contents When agents interact with people as part of a team, fairness becomes an important factor. Prior work has proposed fairness metrics based on teammates' capabilities for task allocation within human-agent teams. However, most metrics only consider teammate capabilities from a third-person point of view (POV). In this work, we extend these metrics to include task preferences and consider a first-person POV. We leverage an iterative design method consisting of simulation data and human data to design a task allocation algorithm that balances task efficiency and fairness based on both capabilities and preferences. We first show that these metrics may not align with people's perceived fairness from a first-person POV. In light of this result, we propose a new fairness metric, fair-equity, and the Fair-Efficient Algorithm (FEA). Our findings suggest that an agent teammate who balances efficiency and fairness based on equity will be perceived to be fairer and preferred by human teammates in various human-agent team types. We suggest that the perception of fairness may also depend on a person's POV.
format Preprint
id arxiv_https___arxiv_org_abs_2505_16171
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Fairness and Efficiency in Human-Agent Teams: An Iterative Algorithm Design Approach
Chang, Mai Lee
Baraka, Kim
Trafton, Greg
Vazhekatt, Zach Lalu
Thomaz, Andrea Lockerd
Human-Computer Interaction
When agents interact with people as part of a team, fairness becomes an important factor. Prior work has proposed fairness metrics based on teammates' capabilities for task allocation within human-agent teams. However, most metrics only consider teammate capabilities from a third-person point of view (POV). In this work, we extend these metrics to include task preferences and consider a first-person POV. We leverage an iterative design method consisting of simulation data and human data to design a task allocation algorithm that balances task efficiency and fairness based on both capabilities and preferences. We first show that these metrics may not align with people's perceived fairness from a first-person POV. In light of this result, we propose a new fairness metric, fair-equity, and the Fair-Efficient Algorithm (FEA). Our findings suggest that an agent teammate who balances efficiency and fairness based on equity will be perceived to be fairer and preferred by human teammates in various human-agent team types. We suggest that the perception of fairness may also depend on a person's POV.
title Fairness and Efficiency in Human-Agent Teams: An Iterative Algorithm Design Approach
topic Human-Computer Interaction
url https://arxiv.org/abs/2505.16171