
TL;DR
This paper introduces similarity networks and partition representations to efficiently construct large probabilistic influence diagrams, demonstrated through a diagnostic system for lymph-node diseases.
Contribution
It presents novel methods for building and assessing large knowledge maps in influence diagrams, enabling practical application in complex domains.
Findings
Knowledge map construction time reduced to 40 hours
Probability assessments decreased from 75,000 to 14,000
Successful development of a large diagnostic expert system
Abstract
Normative expert systems have not become commonplace because they have been difficult to build and use. Over the past decade, however, researchers have developed the influence diagram, a graphical representation of a decision maker's beliefs, alternatives, and preferences that serves as the knowledge base of a normative expert system. Most people who have seen the representation find it intuitive and easy to use. Consequently, the influence diagram has overcome significantly the barriers to constructing normative expert systems. Nevertheless, building influence diagrams is not practical for extremely large and complex domains. In this book, I address the difficulties associated with the construction of the probabilistic portion of an influence diagram, called a knowledge map, belief network, or Bayesian network. I introduce two representations that facilitate the generation of large…
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