Abstract
While pure case based classification systems can take little advantage of heuristic expert knowledge, heuristic classification systems have much difficulty to adapt themselves with case knowledge. There are three integration strategies: Combine two independent problem solvers, learn rules from cases, or incorporate heuristic knowledge into the case based approach. Pursuing the last alternative, we present a case comparison language (CCL) designed for incremental refinement with knowledge from domain experts. Nevertheless CCL needs considerably less knowledge than is usually necessary for probabilistic rules in heuristic classification. The key features of CCL are combining static and dynamic weighting of symptoms, providing several schemes for computation of partial similarities between symptoms, and a categorical rule language with abstraction layers for inferring the domain terminology from the raw symptoms. Its simplicity, adaptability, and explainability, its strong dependence on domain terminology, its high potential for parallelism, and its incremental approach to knowledge acquisition seem to make it a candidate for a model of human classification problem solving in experience-rich domains. CCL is implemented as a component named CCC+ of the diagnostic expert system shell D3.
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Puppe, F., Goos, K. (1991). Improving Case Based Classification with Expert Knowledge. In: Christaller, T. (eds) GWAI-91 15. Fachtagung für Künstliche Intelligenz. Informatik-Fachberichte, vol 285. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-662-02711-0_21
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DOI: https://doi.org/10.1007/978-3-662-02711-0_21
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