Coverage estimation methods for stratified fault-injection
Title | Coverage estimation methods for stratified fault-injection |
Publication Type | Journal Articles |
Year of Publication | 1999 |
Authors | Cukier M, Powell D, Ariat J |
Journal | Computers, IEEE Transactions on |
Volume | 48 |
Issue | 7 |
Pagination | 707 - 723 |
Date Published | 1999/07// |
ISBN Number | 0018-9340 |
Keywords | Bayes methods, Bayesian estimations, confidence regions, coverage estimation methods, fault tolerance coverage, fault tolerant computing, frequentist confidence limits, parameter estimation, parameters estimation, Pearson distribution system, statistical processing, stratified fault-injection, stratified sampling, vectorial statistic |
Abstract | This paper addresses the problem of estimating fault tolerance coverage through statistical processing of observations collected in fault-injection experiments. In an earlier paper, venous estimators based on simple sampling in the complete fault/activity input space and stratified sampling in a partitioned space were studied; frequentist confidence limits were derived based on a normal approximation. In this paper, the validity of this approximation is analyzed. The theory of confidence regions is introduced to estimate coverage without approximation when stratification is used. Three statistics are considered for defining confidence regions. It is shown that one-a vectorial statistic-is often more conservative than the other two. However, only the vectorial statistic is computationally tractable. We then consider Bayesian estimation methods for stratified sampling. Two methods are presented to obtain an approximation of the posterior distribution of the coverage by calculating its moments. The moments are then used to identify the type of the distribution in the Pearson distribution system, to estimate its parameters, and to obtain the coverage confidence limit. Three hypothetical example systems are used to compare the validity and the conservatism of the frequentist and Bayesian estimations |
DOI | 10.1109/12.780878 |