Title of article :
Compositional reasoning for weighted Markov decision processes
Author/Authors :
Yuxin Deng، نويسنده , , Matthew Hennessy، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2013
Pages :
43
From page :
2537
To page :
2579
Abstract :
Weighted Markov decision processes (MDPs) have long been used to model quantitative aspects of systems in the presence of uncertainty. However, much of the literature on such MDPs takes a monolithic approach, by modelling a system as a particular MDP; properties of the system are then inferred by analysis of that particular MDP. In contrast in this paper we develop compositional methods for reasoning about weighted MDPs, as a possible basis for compositional reasoning about their quantitative behaviour. In particular we approach these systems from a process algebraic point of view. For these we define a coinductive simulation-based behavioural preorder which is compositional in the sense that it is preserved by structural operators for constructing weighted MDPs from components.For finitary convergent processes, which are finite-state and finitely branching systems without divergence, we provide two characterisations of the behavioural preorder. The first uses a novel quantitative probabilistic logic, while the second is in terms of a novel form of testing, in which benefits are accrued during the execution of tests.
Keywords :
Markov decision processes , simulation , Testing preorder , modal logic , Compositionality
Journal title :
Science of Computer Programming
Serial Year :
2013
Journal title :
Science of Computer Programming
Record number :
1080453
Link To Document :
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