Report (University of Illinois at Urbana-Champaign. Dept. of Computer Science) no.1536
"To appear in International Journal of Expert Systems, 1989."
"UIUCDCS-R-89-1536"
"August 1989."
Abstract: "The first generation of expert systems (e.g., MYCIN, DENDRAL, R1) is often characterized as only using shallow methods of representation and inference, such as the use of production rules to encode empirical knowledge. First-generation expert systems are often dismissed on the grounds that shallow methods have inherent and fatal shortcomings which prevent them from achieving problem-solving behaviors that expert systems should possess. Examples of such desirable behaviors include graceful performance degradation, the handling of novel problems, and the ability of the expert system to detect its problem-solving limits
This paper analyzes the relationship between the techniques used to build expert systems and the behaviors they exhibit to show that there is not sufficient evidence to link the behavioral shortcomings of first-generation expert systems to the shallow methods of representation and inference they employ. There is only evidence that the shortcomings are a consequence of a general lack of knowledge. Moreover, the paper shows that the first-generation of expert systems employ both shallow methods and most of the so-called deep methods. Lastly, we show that deeper methods augment but do not replace shallow reasoning methods; most expert systems should possess both."
Includes bibliographical references
Supported in part by the ONR
Supported in part by the NSF
Supported in part by the NIH
Supported in part by DARPA
Notes
No copyright page found.
Addeddate
2013-05-01 19:13:19
Associated-names
Wilkins, David C. author; University of Illinois at Urbana-Champaign. Department of Computer Science
Bookplateleaf
0004
Camera
Canon EOS 5D Mark II
Copyright_description
In copyright. Digitized with permission of the University of Illinois Board of Trustees. Contact digicc@library.illinois.edu for information.