Theory-Based Inductive Learning: An Integration of Symbolic and Quantitative Methods
Abstract
The objective of this paper is to propose a method that will generate a causal explanation of observed events in an uncertain world and then make decisions based on that explanation. Feedback can cause the explanation and decisions to be modified. I call the method Theory-Based Inductive Learning (T-BIL). T-BIL integrates deductive learning, based on a technique called Explanation-Based Generalization (EBG) from the field of machine learning, with inductive learning methods from Bayesian decision theory. T-BIL takes as inputs (1) a decision problem involving a sequence of related decisions over time, (2) a training example of a solution to the decision problem in one period, and (3) the domain theory relevant to the decision problem. T-BIL uses these inputs to construct a probabilistic explanation of why the training example is an instance of a solution to one stage of the sequential decision problem. This explanation is then generalized to cover a more general class of instances and is used as the basis for making the next-stage decisions. As the outcomes of each decision are observed, the explanation is revised, which in turn affects the subsequent decisions. A detailed example is presented that uses T-BIL to solve a very general stochastic adaptive control problem for an autonomous mobile robot.
Cite
Text
Star. "Theory-Based Inductive Learning: An Integration of Symbolic and Quantitative Methods." Conference on Uncertainty in Artificial Intelligence, 1987. doi:10.1016/0888-613x(88)90163-6Markdown
[Star. "Theory-Based Inductive Learning: An Integration of Symbolic and Quantitative Methods." Conference on Uncertainty in Artificial Intelligence, 1987.](https://mlanthology.org/uai/1987/star1987uai-theory/) doi:10.1016/0888-613x(88)90163-6BibTeX
@inproceedings{star1987uai-theory,
title = {{Theory-Based Inductive Learning: An Integration of Symbolic and Quantitative Methods}},
author = {Star, Spencer},
booktitle = {Conference on Uncertainty in Artificial Intelligence},
year = {1987},
pages = {401-424},
doi = {10.1016/0888-613x(88)90163-6},
url = {https://mlanthology.org/uai/1987/star1987uai-theory/}
}