UTCS Artificial Intelligence
courses
talks/events
demos
people
projects
publications
software/data
labs
areas
admin
Combining Symbolic and Neural Learning to Revise Probabilistic Theories (1992)
J.
Jeffrey Mahoney
and
Raymond J. Mooney
This paper describes RAPTURE --- a system for revising probabilistic theories that combines symbolic and neural-network learning methods. RAPTURE uses a modified version of backpropagation to refine the certainty factors of a Mycin-style rule-base and it uses ID3's information gain heuristic to add new rules. Results on two real-world domains demonstrate that this combined approach performs as well or better than previous methods.
View:
PDF
,
PS
Citation:
In
Proceedings of the ML92 Workshop on Integrated Learning in Real Domains
, Aberdeen, Scotland, July 1992.
Bibtex:
@InProceedings{mahoney:mlw92, title={Combining Symbolic and Neural Learning to Revise Probabilistic Theories}, author={J. Jeffrey Mahoney and Raymond J. Mooney}, booktitle={Proceedings of the ML92 Workshop on Integrated Learning in Real Domains}, month={July}, address={Aberdeen, Scotland}, url="http://www.cs.utexas.edu/users/ai-lab?mahoney:mlw92", year={1992} }
People
Jeff Mahoney
Ph.D. Alumni
mahoney [at] firstadvisors com
Raymond J. Mooney
Faculty
mooney [at] cs utexas edu
Areas of Interest
Machine Learning
Neural-Symbolic Learning
Theory and Knowledge Refinement
Uncertain and Probabilistic Reasoning
Labs
Machine Learning