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A Formal Model for Experience-Aided Diagnosis

This paper presents a novel approach to model–based diagnosis. The approach addresses the two main problems that have prevented model–based diagnostic techniques from being widely used: computational complexity of abduction and inadequacies of device models. A model for automated diagnosis is define...

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Published in:Computational intelligence 1997-05, Vol.13 (2), p.188-214
Main Authors: Féret, Michel P., Glasgow, Janice I.
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Language:English
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description This paper presents a novel approach to model–based diagnosis. The approach addresses the two main problems that have prevented model–based diagnostic techniques from being widely used: computational complexity of abduction and inadequacies of device models. A model for automated diagnosis is defined that combines (1) deduction to rule out hypotheses, (2) abduction to generate hypotheses, and (3) induction to recall past experiences and account for potential errors in the device models. A review of the three forms of inference is provided, as well as a detailed analysis of the relationship between case–based reasoning and induction. The proposed model for diagnosis is used to characterize diagnostic errors and relate them to different types of errors in the device models. Experimental results are then described and used to assert the practicality and the usefulness of the approach. The model presented in this paper yields a practical method for solving hard diagnostic problems at a reasonable computational cost and provides a theoretical basis for overcoming the problem of partially incorrect device models.
doi_str_mv 10.1111/0824-7935.00038
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ispartof Computational intelligence, 1997-05, Vol.13 (2), p.188-214
issn 0824-7935
1467-8640
language eng
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source Wiley-Blackwell Read & Publish Collection
subjects abduction
case-based reasoning
induction
model-based diagnosis
title A Formal Model for Experience-Aided Diagnosis
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