University of Wisconsin Computer Sciences Header Map (repeated with 
textual links if page includes departmental footer) Useful Resources Research at UW-Madison CS Dept UW-Madison CS Undergraduate Program UW-Madison CS Graduate Program UW-Madison CS People Useful Information Current Seminars in the CS Department Search Our Site UW-Madison CS Computer Systems Laboratory UW-Madison Computer Sciences Department Home Page UW-Madison Home Page

J. Shavlik, R. Mooney & G. Towell (1991).
Symbolic and Neural Network Learning Algorithms: An Experimental Comparison. Machine Learning, 6, pp. 111-143.



This publication is available remotely.

Abstract:

Despite the fact that many symbolic and neural network (connectionist) learning algorithms address the same problem of learning from classified examples, very little is known regarding their comparative strengths and weaknesses. Experiments comparing the ID3 symbolic learning algorithm with the perception and backpropagation neural learning algorithms have been performed using five large, real-world data sets. Overall, backpropagation performs slightly better than the other two algorithms in terms of classification accuracy on new examples, but takes much longer to train. Experimental results suggest that backpropagation can work significantly better on data sets containing numerical data. Also analyzed empirically are the effects of (1) the amount of training data, (2) imperfect training examples, and (3) the encoding of the desired outputs. Backpropagation occasionally outperforms the other two systems when given relatively small amounts of training data. It is slightly more accurate than ID3 when examples are noisy or incompletely specified. Finally, backpropagation more effectively utilizes a ''distributed'' output encoding.


return Return to the publications of the Univ. of Wisconsin Machine Learning Research Group.

Computer Sciences Department
College of Letters and Science
University of Wisconsin - Madison


INFORMATION ~ PEOPLE ~ GRADS ~ UNDERGRADS ~ RESEARCH ~ RESOURCES

5355a Computer Sciences and Statistics ~ 1210 West Dayton Street, Madison, WI 53706
cs@cs.wisc.edu ~ voice: 608-262-1204 ~ fax: 608-262-9777