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Theory formation in artificial intelligence
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Proceedings of the 17th conference on ACM Annual Computer Science Conference table of contents
Louisville, Kentucky
Pages: 138 - 144  
Year of Publication: 1989
ISBN:0-89791-299-3
Author
L.-M. Fu  Department of Electrical Engineering, and Computer Science, Milwaukee, Wisconsin
Sponsor
ACM: Association for Computing Machinery
Publisher
ACM  New York, NY, USA
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ABSTRACT

Theories in terms of causal mechanisms and causal relationships are a critical component of problem solving in artificial intelligence. A theory for explaining a given observation should satisfy constraints based on causal knowledge. In this paper, we present a new approach to theory formation. Under this approach, a theory is formed by reasoning with causal constraints. The reasoning method is constraint-satisfaction. Each coherent set of causal mechanisms discovered by the method instantiates the domain causal model to generate a causal hypothesis. If the domain causal model is true, then it can be shown that one of the causal hypotheses generated is true. In the case of using multi-level constraints, a theory is refined into more details by reasoning top-down through the levels of constraints.


REFERENCES

Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.

 
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Patil, R.S., Szolovits, P., and Schwartz, W.B., Causal understanding of patient illness in medical diagnosis, 7th IJCAI, 1981, 893-899.
 
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Pazzani, M, Dyer, M., and Flowers, M., The role of prior causal theories in generalization, in Proceedings of AAAI-86, Philadelphia, 1986, 545-550.
 
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