Title of article
Deep versus compiled knowledge approaches to diagnostic problem-solvingt
Author/Authors
CHANDRASEKARAN، B. نويسنده , , MITTAL، SANJAY نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 1999
Pages
-356
From page
357
To page
0
Abstract
Most of the current generation expert systems use knowledge which does not represent a deep understanding of the domain, but is instead a collection of "pattern -> action" rules, which correspond to the problem-solving heuristics of the expert in the domain. There has thus been some debate in the field about the need for and role of "deep" knowledge in the design of expert systems. It is often argued that this underlying deep knowledge will enable an expert system to solve hard problems. In this paper we consider diagnostic expert systems and argue that given a body of underlying knowledge that is relevant to diagnostic reasoning in a medical domain, it is possible to create a diagnostic problem-solving structure which has all the aspects of the underlying knowledge needed for diagnostic reasoning "compiled" into it. It is argued this compiled structure can solve all the diagnostic problems in its scope efficiently, without any need to access the underlying structures. We illustrate such a diagnostic structure by reference to our medical system MDX. We also analyze the use of these knowledge structures in providing explanations of diagnostic reasoning.
Keywords
diesel fuel substitution , Natural gas , alternative fuels , dual fuelling
Journal title
INTERNATIONAL JOURNAL OF HUMAN COMPUTER STUDIES
Serial Year
1999
Journal title
INTERNATIONAL JOURNAL OF HUMAN COMPUTER STUDIES
Record number
9530
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