Topics in Expert System Design: Methodologies and ToolsGiovanni Guida, Carlo Tasso North-Holland, 1989 - 441 pages Expert Systems are so far the most promising achievement of artificial intelligence research. Decision making, planning, design, control, supervision and diagnosis are areas where they are showing great potential. However, the establishment of expert system technology and its actual industrial impact are still limited by the lack of a sound, general and reliable design and construction methodology. |
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Page 29
... applicable to all expert systems , there are some that are specific to the development of an expert system in a corporate environment . These involve , for example , the likelihood of corporate acceptance of a system , the support for ...
... applicable to all expert systems , there are some that are specific to the development of an expert system in a corporate environment . These involve , for example , the likelihood of corporate acceptance of a system , the support for ...
Page 166
... applicable in different contexts . The first and most important outcome of this phase is to obtain a decomposition of the overall problem into subproblems . These in turn should be likewise succesively decomposed , until the knowledge ...
... applicable in different contexts . The first and most important outcome of this phase is to obtain a decomposition of the overall problem into subproblems . These in turn should be likewise succesively decomposed , until the knowledge ...
Page 185
... applicable . There is one other well documented comparison of the usefulness of some early expert system building tools - the environmental crisis management handling problem at Oak Ridge National Laboratory ( Waterman and Hayes - Roth ...
... applicable . There is one other well documented comparison of the usefulness of some early expert system building tools - the environmental crisis management handling problem at Oak Ridge National Laboratory ( Waterman and Hayes - Roth ...
Contents
From life cycle to development | 3 |
Choosing an expert system domain | 27 |
Tools and motivations | 47 |
Copyright | |
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abstract activities AI Magazine application approach Artificial Intelligence assessment attribute backward chaining behavior Breuker building cognitive complete components Computer concepts conceptual model construction context cycle decision defined described diagnosis domain expert domain knowledge environment example expert system development expert system evaluation expert system technology expertise facilities Figure formal function goal graphical heuristics identified implementation important inductive input instance integrated interaction interface interpretation models KADS KCML knowledge acquisition knowledge base Knowledge Craft knowledge elicitation knowledge engineer knowledge representation knowledge-based systems KRITON language layer LISP machine machine learning metaclasses methodology methods model-based reasoning MYCIN objects operations OPS5 output particular performance phase possible problem solving problem solving process produce programming Prolog protocol analysis prototype refinement relations reliability repertory grid represent requirements rule-based rules selection shells situations software engineering solution specific strategies target system task techniques types validity values