基于规则的专家系统与线性模型:基于实例学习方法的一项实证比较

Rule‐Based Expert Systems and Linear Models: An Empirical Comparison of Learning‐By‐Examples Methods*

DECISION SCIENCES · 1992
被引 28
人大 AABS 3

中文导读

比较了逻辑回归与两种归纳算法(ID3和遗传算法)在建模专家决策行为上的表现,发现它们在研究生录取任务中效果相当,但在投标人选择任务中存在显著差异。

Abstract

ABSTRACT Building models of expert decision‐making behavior from examples of experts’ decisions continues to receive considerable research attention. In the 1960's and 70's, linear models derived by statistical methods were studied extensively. More recently, rule‐based expert systems derived by induction algorithms have been the focus of attention. Few studies compare the two approaches. This paper reports on a study that compared linear models derived by logistic regression with rule‐based systems produced by two induction algorithms—ID3 and the genetic algorithm. The techniques performed comparably in modeling the experts at one task, graduate admissions, but differed significantly at a second task, bidder selection.

机器学习专家系统决策树逻辑回归数据挖掘