Proceedings of the Twenty-Eighth International Joint Conference on Artificial Intelligence 2019
DOI: 10.24963/ijcai.2019/220
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Reasoning about Quality and Fuzziness of Strategic Behaviours

Abstract: Temporal logics are extensively used for the specification of on-going behaviours of reactive systems. Two significant developments in this area are the extension of traditional temporal logics with modalities that enable the specification of on-going strategic behaviours in multi-agent systems, and the transition of temporal logics to a quantitative setting, where different satisfaction values enable the specifier to formalise concepts such as certainty or quality. We introduce and study SL[F]-a quantitative … Show more

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Cited by 11 publications
(24 citation statements)
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“…SL has been extended to handle imperfect information and knowledge operators (Berthon et al 2021;Belardinelli et al 2020;Maubert and Murano 2018), but none of these logics can account for quantitative aspects. Recently, SL[F ] (Bouyer et al 2019a) was introduced as a quantitative extension of SL. By introducing quantitative values in the models and functions in the language, it enables the reasoning about all key concepts involved in auctions: utilities, payments, goods and quantities.…”
Section: Related Workmentioning
confidence: 99%
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“…SL has been extended to handle imperfect information and knowledge operators (Berthon et al 2021;Belardinelli et al 2020;Maubert and Murano 2018), but none of these logics can account for quantitative aspects. Recently, SL[F ] (Bouyer et al 2019a) was introduced as a quantitative extension of SL. By introducing quantitative values in the models and functions in the language, it enables the reasoning about all key concepts involved in auctions: utilities, payments, goods and quantities.…”
Section: Related Workmentioning
confidence: 99%
“…SL[F ] (Bouyer et al 2019a) introduces quantitative aspects in SL, but it lacks the ability to handle imperfect information inherent to the auction scenarios that we aim at modeling, where agents may ignore other agents' preferences for instance. We thus introduce SLK[F ], which extends SL[F ] with imperfect information and knowledge operators.…”
Section: Epistemic Sl[f ]mentioning
confidence: 99%
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“…Also, not only is the behavioral specification of the system itself very hard, but it is no easier to specify the assertions that describe the behavior we want to verify in terms that are readily aligned with the expectations of the human users and engineers. This is further complicated by the fact that whether some behavior is desired or not may not by a binary decision but a quantitative one, spanning multiple scales (37).…”
Section: Next-generation Autonomous Systemsmentioning
confidence: 99%