Inductive Learning for Case-Based Diagnosis
with Multiple Faults
Joachim Baumeister, Martin Atzmüller and Frank Puppe

We present adapted inductive methods for learning similarities, parameter weights and diagnostic profiles for case-based reasoning. All of these methods can be refined incrementally by applying different types of background knowledge.
Diagnostic profiles are used for extending the conventional CBR to solve cases with multiple faults.
The context of our work is to supplement a medical documentation and consultation system by CBR techniques, and we present first evaluations in this domain.

Keywords: inductive learning, case-based diagnosis, multiple-faults, diagnostic profiles, set-covering models
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