Better Automated Importance Splitting for Transient Rare Events

TitleBetter Automated Importance Splitting for Transient Rare Events
Publication TypeBook Chapter
Year of Publication2017
AuthorsBudde, CE, D'Argenio, PR, Hartmanns, A
EditorLarsen, KG, Sokolsky, O, Wang, J
Book TitleDependable Software Engineering. Theories, Tools, and Applications - Third International Symposium, {SETTA} 2017, Changsha, China, October 23-25, 2017, Proceedings
Series TitleLecture Notes in Computer Science
Volume10606
Pagination42–58
PublisherSpringer
ISBN Number978-3-319-69482-5
AbstractStatistical model checking uses simulation to overcome the state space explosion problem in formal verification. Yet its runtime explodes when faced with rare events, unless a rare event simulation method like importance splitting is used. The effectiveness of importance splitting hinges on nontrivial model-specific inputs: an importance function with matching splitting thresholds. This prevents its use by non-experts for general classes of models. In this paper, we propose new method combinations with the goal of fully automating the selection of all parameters for importance splitting. We focus on transient (reachability) properties, which particularly challenged previous techniques, and present an exhaustive practical evaluation of the new approaches on case studies from the literature. We find that using Restart simulations with a compositionally constructed importance function and thresholds determined via a new expected success method most reliably succeeds and performs very well. Our implementation within the Modest Toolset supports various classes of formal stochastic models and is publicly available.
URLhttps://doi.org/10.1007/978-3-319-69483-2_3
DOI10.1007/978-3-319-69483-2_3
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