Scalable Stochastic Parametric Verification with Stochastic Variational Smoothed Model Checking
Luca Bortolussi, Francesca Cairoli, Ginevra Carbone, Paolo Pulcini

TL;DR
This paper introduces SV-smMC, a scalable stochastic variational inference approach for parametric verification of stochastic models, improving efficiency and applicability to high-dimensional parameter spaces.
Contribution
It extends smMC by integrating stochastic variational inference, enabling scalable Bayesian inference with Gaussian Processes and Bayesian Neural Networks.
Findings
SV-smMC improves scalability over traditional smMC.
The method achieves comparable accuracy with increased computational efficiency.
GPU acceleration enhances inference speed for large datasets.
Abstract
Parametric verification of linear temporal properties for stochastic models can be expressed as computing the satisfaction probability of a certain property as a function of the parameters of the model. Smoothed model checking (smMC) aims at inferring the satisfaction function over the entire parameter space from a limited set of observations obtained via simulation. As observations are costly and noisy, smMC is framed as a Bayesian inference problem so that the estimates have an additional quantification of the uncertainty. In smMC the authors use Gaussian Processes (GP), inferred by means of the Expectation Propagation algorithm. This approach provides accurate reconstructions with statistically sound quantification of the uncertainty. However, it inherits the well-known scalability issues of GP. In this paper, we exploit recent advances in probabilistic machine learning to push this…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Fault Detection and Control Systems · Bayesian Modeling and Causal Inference
MethodsVariational Inference
