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AAAI
2008

Computing Minimal Diagnoses by Greedy Stochastic Search

14 years 2 months ago
Computing Minimal Diagnoses by Greedy Stochastic Search
Most algorithms for computing diagnoses within a modelbased diagnosis framework are deterministic. Such algorithms guarantee soundness and completeness, but are P 2 hard. To overcome this complexity problem, which prohibits the computation of high-cardinality diagnoses for large systems, we propose a novel approximation approach for multiple-fault diagnosis, based on a greedy stochastic algorithm called SAFARI (StochAstic Fault diagnosis AlgoRIthm). We prove that SAFARI can be configured to compute diagnoses which are of guaranteed minimality under subsumption. We analytically model SAFARI search as a Markov chain, and show a probabilistic bound on the minimality of its minimal diagnosis approximations. We have applied this algorithm to the 74XXX and ISCAS85 suites of benchmark combinatorial circuits, demonstrating order-ofmagnitude speedups over two state-of-the-art deterministic algorithms, CDA and HA , for multiple-fault diagnoses.
Alexander Feldman, Gregory M. Provan, Arjan J. C.
Added 02 Oct 2010
Updated 02 Oct 2010
Type Conference
Year 2008
Where AAAI
Authors Alexander Feldman, Gregory M. Provan, Arjan J. C. van Gemund
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