Rerepresenting and Restructuring Domain Theories: A Constructive Induction Approach
Abstract
Theory revision integrates inductive learning and background knowledge by combining training examples with a coarse domain theory to produce a more accurate theory. There are two challenges that theory revision and other theory-guided systems face. First, a representation language appropriate for the initial theory may be inappropriate for an improved theory. While the original representation may concisely express the initial theory, a more accurate theory forced to use that same representation may be bulky, cumbersome, and difficult to reach. Second, a theory structure suitable for a coarse domain theory may be insufficient for a fine-tuned theory. Systems that produce only small, local changes to a theory have limited value for accomplishing complex structural alterations that may be required. Consequently, advanced theory-guided learning systems require flexible representation and flexible structure. An analysis of various theory revision systems and theory-guided learning systems reveals specific strengths and weaknesses in terms of these two desired properties. Designed to capture the underlying qualities of each system, a new system uses theory-guided constructive induction. Experiments in three domains show improvement over previous theory-guided systems. This leads to a study of the behavior, limitations, and potential of theory-guided constructive induction.
Cite
Text
Donoho and Rendell. "Rerepresenting and Restructuring Domain Theories: A Constructive Induction Approach." Journal of Artificial Intelligence Research, 1995. doi:10.1613/JAIR.129Markdown
[Donoho and Rendell. "Rerepresenting and Restructuring Domain Theories: A Constructive Induction Approach." Journal of Artificial Intelligence Research, 1995.](https://mlanthology.org/jair/1995/donoho1995jair-rerepresenting/) doi:10.1613/JAIR.129BibTeX
@article{donoho1995jair-rerepresenting,
title = {{Rerepresenting and Restructuring Domain Theories: A Constructive Induction Approach}},
author = {Donoho, Steven K. and Rendell, Larry A.},
journal = {Journal of Artificial Intelligence Research},
year = {1995},
pages = {411-446},
doi = {10.1613/JAIR.129},
volume = {2},
url = {https://mlanthology.org/jair/1995/donoho1995jair-rerepresenting/}
}