作者: Matheus Ap do Carmo Alves , Elnaz Shafipour Yourdshahi , Amokh Varma , Leandro Soriano Marcolino , Jó Ueyama
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摘要: In this paper, we present On-line Estimators for Ad-hoc Task Execution (OEATE), a novel algorithm for teammates’ type and parameter estimation in decentralised task execution. We show theoretically that our algorithm can converge to perfect estimations, under some assumptions, as the number of tasks increases. Empirically, we show better performance against our baselines while estimating type and parameters in several different settings. This is an extended abstract of our JAAMAS paper available online [9].