Title :
Verifying the Evolution of Probability Distributions Governed by a DTMC
Author :
Kwon, Youngmin ; Agha, Gul
Author_Institution :
Microsoft Corp., Redmond, WA, USA
Abstract :
We propose a new probabilistic temporal logic, iLTL, which captures properties of systems whose state can be represented by probability mass functions (pmfs). Using iLTL, we can specify reachability to a state (i.e., a pmf), as well as properties representing the aggregate (expected) behavior of a system. We then consider a class of systems whose transitions are governed by a Markov Chain-in this case, the set of states a system may be in is specified by the transitions of pmfs from all potential initial states to the final state. We then provide a model checking algorithm to check iLTL properties of such systems. Unlike existing model checking techniques, which either compute the portions of the computational paths that satisfy a specification or evaluate properties along a single path of pmf transitions, our model checking technique enables us to do a complete analysis on the expected behaviors of large-scale systems. Desirable system parameters may also be found as a counterexample of a negated goal. Finally, we illustrate the usefulness of iLTL model checking by means of two examples: assessing software reliability and ensuring the results of administering a drug.
Keywords :
Markov processes; formal verification; statistical distributions; temporal logic; DTMC; discrete time Markov chain; iLTL; large scale system; model checking; probability distribution; probability mass function; temporal logic; Discrete Time Markov Chain; Probabilistic model checking; linear temporal logic; pharmacokinetics.;
Journal_Title :
Software Engineering, IEEE Transactions on
DOI :
10.1109/TSE.2010.80