Towards Adjustable Autonomy for the Real World
D. V. Pynadath, P. Scerri, M. Tambe

TL;DR
This paper introduces a novel, strategy-based approach to adjustable autonomy that enables multi-agent teams to dynamically transfer control and coordinate actions, minimizing miscoordination costs in complex real-world settings.
Contribution
It proposes a transfer-of-control strategy framework and a mathematical model using Markov Decision Processes for optimal decision-making in multi-agent human-robot collaboration.
Findings
Successfully implemented in a real-world multi-agent system
Improved coordination and decision quality in dynamic environments
Reduced miscoordination costs through strategic control transfers
Abstract
Adjustable autonomy refers to entities dynamically varying their own autonomy, transferring decision-making control to other entities (typically agents transferring control to human users) in key situations. Determining whether and when such transfers-of-control should occur is arguably the fundamental research problem in adjustable autonomy. Previous work has investigated various approaches to addressing this problem but has often focused on individual agent-human interactions. Unfortunately, domains requiring collaboration between teams of agents and humans reveal two key shortcomings of these previous approaches. First, these approaches use rigid one-shot transfers of control that can result in unacceptable coordination failures in multiagent settings. Second, they ignore costs (e.g., in terms of time delays or effects on actions) to an agent's team due to such transfers-of-control.…
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