An incremental knowledge acquisition-based system for critical domains

作者:Jesus Torralba Rodriguez Francisco; Tomas Fernandez Breis Jesualdo; Martinez Bejar Rodrigo; Bixquert Montagud Vicente
来源:Expert Systems with Applications, 2010, 37(4): 2838-2847.
DOI:10.1016/j.eswa.2009.09.007

摘要

In some real life situations, humans have to make decisions in critical environments. When a human analyzes a situation, (s)he has to decide whether there is a risky situation and what actions have to be performed. It is always desirable to detect these situations in advance, because the solution could be easier and the expert would have more time to make the best decision. An intelligent system may analyze the information, extract conclusions, format and order the causes leading to the severe condition, so becoming the decision-making process less dramatic. Multiple Classification Ripple Down Rules (MCRDR) are a successful intelligent classification technique which has proven its efficiency in several application domains, but it has some limitations to define complex situations. In this work, an extension to MCRDR to cover with complex domains is proposed. The validation of this methodological extension has been done through the development of a prototype for complex medical domains and this is also presented in this paper.

  • 出版日期2010-4