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An Inductive Algorithm Approach to Knowledge Acquisition for Expert System DevelopmentA Pilot Study

 

作者: Suzanne Henry,  

 

期刊: Computers in Nursing  (OVID Available online 1995)
卷期: Volume 13, issue 5  

页码: 226-232

 

ISSN:0736-8593

 

年代: 1995

 

出版商: OVID

 

关键词: Inductive algorithms;Expert systems;Machine learning;Knowledge acquisition

 

数据来源: OVID

 

摘要:

Knowledge acquisition, which consists of knowledge elicitation and knowledge representation, often is considered the weakest link in the design of expert systems. Systems frequently are built on the knowledge of one expert and require extensive use of knowledge engineering techniques to elicit this knowledge from the expert. Inductive algorithms are a potential alternative method of knowledge acquisition for expert system development. The aim of this pilot study was to examine the feasibility of applying machine learning techniques, specifically, inductive algorithms, to an existing research database as a method for knowledge elicitation and knowledge representation for expert system development. Two inductive algorithms (C4 and Classification and Regression Trees [CART]) that generate decision trees were selected for the analysis using a data set of 201 patients hospitalized forPneumocystis carinilpneumonia. Neither C4 nor CART produced trees with an accuracy that was significantly better than the baseline accuracy (71.3%) for prediction of outcome in the data set. The mean accuracy of the C4 decision trees was below baseline and the mean accuracy of CART decision trees was 74.6%. The experts found both algorithms comprehensible, but not adequate, and identified important missing predictor variables. The study findings suggest that additional research is needed to examine the appropriate use of inductive algorithms in the transformation of nursing data and information into nursing knowledge.

 

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