2020
DOI: 10.1017/s0269888920000235
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Adaptable and stable decentralized task allocation for hierarchical domains

Abstract: Many real-world domains can benefit from adaptable decentralized task allocation through emergent specialization, especially in large teams of non-communicating agents. We begin with an existing bio-inspired response threshold reinforcement approach for decentralized task allocation and extend it to handle hierarchical task domains. We test the extension on self-deployment of a large team of non-communicating agents to patrolling a hierarchically defined set of areas. Results show near-ideal performance across… Show more

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“…The first paper Adaptable and stable decentralized task allocation for hierarchical domains by Kazakova and Sukthankar (2020) extends a previous model of observed insect behavior (StimHab), to allow agents to self-allocate to hierarchical sets of tasks. The proposed method is highly scalable as individual agents do not communicate with each other and are not aware of the capabilities, preferences, or circumstances of the other agents in the system.…”
Section: Contents Of the Special Issuementioning
confidence: 99%
“…The first paper Adaptable and stable decentralized task allocation for hierarchical domains by Kazakova and Sukthankar (2020) extends a previous model of observed insect behavior (StimHab), to allow agents to self-allocate to hierarchical sets of tasks. The proposed method is highly scalable as individual agents do not communicate with each other and are not aware of the capabilities, preferences, or circumstances of the other agents in the system.…”
Section: Contents Of the Special Issuementioning
confidence: 99%