2019
Mean-Payoff Optimization in Continuous-Time Markov Chains with Parametric Alarms
BAIER, Christel, Clemens DUBSLAFF, Ľuboš KORENČIAK, Antonín KUČERA, Vojtěch ŘEHÁK et. al.Základní údaje
Originální název
Mean-Payoff Optimization in Continuous-Time Markov Chains with Parametric Alarms
Autoři
BAIER, Christel (276 Německo), Clemens DUBSLAFF (276 Německo), Ľuboš KORENČIAK (703 Slovensko, garant, domácí), Antonín KUČERA (203 Česká republika, domácí) a Vojtěch ŘEHÁK (203 Česká republika, domácí)
Vydání
ACM Transactions on Modeling and Computer Simulation (TOMACS), ACM, 2019, 1049-3301
Další údaje
Jazyk
angličtina
Typ výsledku
Článek v odborném periodiku
Obor
10201 Computer sciences, information science, bioinformatics
Stát vydavatele
Spojené státy
Utajení
není předmětem státního či obchodního tajemství
Odkazy
Impakt faktor
Impact factor: 1.380
Kód RIV
RIV/00216224:14330/19:00107916
Organizační jednotka
Fakulta informatiky
UT WoS
000510187600010
Klíčová slova anglicky
parameter synthesis; continuous-time Markov chains; non-Markovian distributions; Markov decision process; policy iteration; generalized semi-Markov process; Markov regenerative process
Štítky
Příznaky
Mezinárodní význam, Recenzováno
Změněno: 20. 4. 2020 10:54, doc. RNDr. Vojtěch Řehák, Ph.D.
Anotace
V originále
Continuous-time Markov chains with alarms (ACTMCs) allow for alarm events that can be non-exponentially distributed. Within parametric ACTMCs, the parameters of alarm-event distributions are not given explicitly and can be the subject of parameter synthesis. In this line, an algorithm is presented that solves the epsilon-optimal parameter synthesis problem for parametric ACTMCs with long-run average optimization objectives. The approach provided in this article is based on a reduction of the problem to finding long-run average optimal policies in semi-Markov decision processes (semi-MDPs) and sufficient discretization of the parameter (i.e., action) space. Since the set of actions in the discretized semi-MDP can be very large, a straightforward approach based on an explicit action-space construction fails to solve even simple instances of the problem. The presented algorithm uses an enhanced policy iteration on symbolic representations of the action space. Soundness of the algorithm is established for parametric ACTMCs with alarm-event distributions that satisfy four mild assumptions, fulfilled by many kinds of distributions. Exemplifying proofs for the satisfaction of these requirements are provided for Dirac, uniform, exponential, Erlang, and Weibull distributions in particular. An experimental implementation shows that the symbolic technique substantially improves the efficiency of the synthesis algorithm and allows us to solve instances of realistic size.
Návaznosti
GA18-11193S, projekt VaV |
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