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
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