Title of article :
An effective sequential statistical test for probabilistic monitoring
Author/Authors :
Grunske، نويسنده , , Lars، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2011
Abstract :
Context
tor checks if a system behaves according to a specified property at runtime. This is required for quality assurance purposes. Currently several approaches exist to monitor standard and real-time properties. However, a current challenge is to provide a comprehensive approach for monitoring probabilistic properties, as they are used to formulate quality of service requirements like performance, reliability, safety, and availability. The main problem of these probabilistic properties is that there is no binary acceptance condition.
ive
rcome this problem, this article presents an improved and generic statistical decision procedure based on acceptance sampling and sequential hypothesis testing.
veloped decision procedure is validated using several experiments that determine the operating characteristic, runtime overhead as well as the expected sample sizes.
s and conclusion
perimental validation provides evidence that the developed testing procedure reduces the runtime overhead and improves the accuracy of classification. Thus, the statistical decision procedure is superior to the existing statistical tests currently used in probabilistic monitoring.
Keywords :
Probabilistic runtime verification , Probabilistic monitoring , Sequential probability ration test , MaC approach , ProMo approach
Journal title :
Information and Software Technology
Journal title :
Information and Software Technology