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FSTTCS
2006
Springer

Testing Probabilistic Equivalence Through Reinforcement Learning

13 years 8 months ago
Testing Probabilistic Equivalence Through Reinforcement Learning
We propose a new approach to verification of probabilistic processes for which the model may not be available. We use a technique from Reinforcement Learning to approximate how far apart two processes are by solving a Markov Decision Process. If two processes are equivalent, the algorithm will return zero, otherwise it will provide a number and a test that witness the non equivalence. We suggest a new family of equivalences, called K-moment, for which it is possible to do so. The weakest, 1-moment equivalence, is trace-equivalence. The others are weaker than bisimulation but stronger than trace-equivalence.
Josee Desharnais, François Laviolette, Sami
Added 23 Aug 2010
Updated 23 Aug 2010
Type Conference
Year 2006
Where FSTTCS
Authors Josee Desharnais, François Laviolette, Sami Zhioua
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