posted on 2003-01-01, 00:00authored bySumit Kumar Jha, Edmund M Clarke, Christopher J. Langmead, Axel Legay, Andre Platzer, Paolo Zuliani
Recently, there has been considerable interest in the use of Model Checking for Systems Biology.
Unfortunately, the state space of stochastic biological models is often too large for classical Model
Checking techniques. For these models, a statistical approach to Model Checking has been shown
to be an effective alternative. Extending our earlier work, we present the first algorithm for performing
statistical Model Checking using Bayesian Sequential Hypothesis Testing. We show that
our Bayesian approach outperforms current statistical Model Checking techniques, which rely on
tests from Classical (aka Frequentist) statistics, by requiring fewer system simulations. Another
advantage of our approach is the ability to incorporate prior Biological knowledge about the model
being verified. We demonstrate our algorithm on a variety of models from the Systems Biology
literature and show that it enables faster verification than state-of-the-art techniques, even when no
prior knowledge is available.