A More General Theory of Diagnosis from First Principles
Alban Grastien, Patrik Haslum, Sylvie Thi\'ebaux

TL;DR
This paper generalizes the theory of model-based diagnosis to be applicable across various system types, providing algorithms that outperform existing methods and handle more complex diagnosis scenarios.
Contribution
It introduces a unified, more general diagnosis framework from first principles, extending Reiter's theory to diverse systems and developing algorithms that are validated on real-world problems.
Findings
Algorithms correctly compute preferred diagnoses.
Implementations outperform specialized algorithms.
Able to solve previously intractable diagnosis instances.
Abstract
Model-based diagnosis has been an active research topic in different communities including artificial intelligence, formal methods, and control. This has led to a set of disparate approaches addressing different classes of systems and seeking different forms of diagnoses. In this paper, we resolve such disparities by generalising Reiter's theory to be agnostic to the types of systems and diagnoses considered. This more general theory of diagnosis from first principles defines the minimal diagnosis as the set of preferred diagnosis candidates in a search space of hypotheses. Computing the minimal diagnosis is achieved by exploring the space of diagnosis hypotheses, testing sets of hypotheses for consistency with the system's model and the observation, and generating conflicts that rule out successors and other portions of the search space. Under relatively mild assumptions, our…
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Taxonomy
TopicsPetri Nets in System Modeling · Formal Methods in Verification · Business Process Modeling and Analysis
