Machine learning methods in statistical model checking and system design - tutorial
Conference Paper
Publication Date:
2015
abstract:
Recent research has seen an increasingly fertile convergence of ideas from machine learning and formal modelling. Here we review some recently introduced methodologies for model checking and system design/parameter synthesis for logical properties against stochastic dynamical models. The crucial insight is a regularity result which states that the satisfaction probability of a logical formula is a smooth function of the parameters of a CTMC. This enables us to select an appropriate class of functional priors for Bayesian model checking and system design. We give a tutorial introduction to the statistical concepts, as well as an illustrative case study which demonstrates the usage of a newly-released software tool, U-check, which implements these methodologies.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
Artificial intelligence; Bayesian networks; Learning systems; Stochastic models; Stochastic systems; Systems analysis
List of contributors:
Bortolussi, Luca
Full Text:
Book title:
Runtime Verification. Lecture Notes in Computer Science