Improving System Performance in Case-Based Iterative Optimization Through Knowledge Filtering
Abstract
Adding knowledge to a knowledge-based system is not monotonically beneficial. We discuss and experimentally validate this observation in the context of CABINS, a system that learns control knowledge for iterative repair in ill-structured optimization problems. In CABINS, situation-dependent user's decisions that guide the repair process are captured in cases together with contextual problem information. During iterative revision in CABINS, cases are exploited for both selection of repair actions and evaluation of repair results. In this paper, we experimentally demonstrated that unfiltered learned knowledge can degrade problem solving performance. We developed and experimentally evaluated the effectiveness of a set of knowledge filtering strategies that are designed to increase problem solving efficiency of the intractable iterative optimization process without sacrificing solution quality. These knowledge filtering strategies utilize progressive case base retrievals and failure inform...
Cite
Text
Miyashita and Sycara. "Improving System Performance in Case-Based Iterative Optimization Through Knowledge Filtering." International Joint Conference on Artificial Intelligence, 1995.Markdown
[Miyashita and Sycara. "Improving System Performance in Case-Based Iterative Optimization Through Knowledge Filtering." International Joint Conference on Artificial Intelligence, 1995.](https://mlanthology.org/ijcai/1995/miyashita1995ijcai-improving/)BibTeX
@inproceedings{miyashita1995ijcai-improving,
title = {{Improving System Performance in Case-Based Iterative Optimization Through Knowledge Filtering}},
author = {Miyashita, Kazuo and Sycara, Katia P.},
booktitle = {International Joint Conference on Artificial Intelligence},
year = {1995},
pages = {371-376},
url = {https://mlanthology.org/ijcai/1995/miyashita1995ijcai-improving/}
}