In this paper, we investigate the probabilistic variants of the strategy logics ATL and ATL* under imperfect information. Specifically, we present novel decidability and complexity results when both the model transitions and the strategies played by agents are stochastic. That is, the semantics of the logics are based on multi-agent, stochastic transition systems with imperfect information, which combine two sources of uncertainty, namely, the partial observability agents have on the environment, and the likelihood of transitions to occur from a system state. Since the model checking problem is undecidable in general in this setting, we restrict our attention to agents with memoryless (positional) strategies. The resulting setting captures the situation in which agents have qualitative uncertainty of the local state and quantitative uncertainty about the occurrence of future events. We illustrate the usefulness of this setting with meaningful examples.
Strategic Abilities of Forgetful Agents in Stochastic Environments / Belardinelli, Francesco; Jamroga, Wojciech; Mittelmann, Munyque; Murano, Aniello. - (2023), pp. -731. (Intervento presentato al convegno International Conference on Principles of Knowledge Representation and Reasoning) [10.24963/kr.2023/71].
Strategic Abilities of Forgetful Agents in Stochastic Environments
Wojciech Jamroga;Munyque Mittelmann
;Aniello Murano
2023
Abstract
In this paper, we investigate the probabilistic variants of the strategy logics ATL and ATL* under imperfect information. Specifically, we present novel decidability and complexity results when both the model transitions and the strategies played by agents are stochastic. That is, the semantics of the logics are based on multi-agent, stochastic transition systems with imperfect information, which combine two sources of uncertainty, namely, the partial observability agents have on the environment, and the likelihood of transitions to occur from a system state. Since the model checking problem is undecidable in general in this setting, we restrict our attention to agents with memoryless (positional) strategies. The resulting setting captures the situation in which agents have qualitative uncertainty of the local state and quantitative uncertainty about the occurrence of future events. We illustrate the usefulness of this setting with meaningful examples.File | Dimensione | Formato | |
---|---|---|---|
kr2023-0071-belardinelli-et-al.pdf
solo utenti autorizzati
Licenza:
Non specificato
Dimensione
167.34 kB
Formato
Adobe PDF
|
167.34 kB | Adobe PDF | Visualizza/Apri Richiedi una copia |
I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.