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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Induction of rules subject to a quality constraint: probabilistic inductive learning
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Induction of rules subject to a quality constraint: probabilistic inductive learning

机译:受质量约束的规则归纳:概率归纳学习

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摘要

Organizational databases are being used to develop rules or guidelines for action that are incorporated into decision processes. Tree induction algorithms of two types, total branching and subset elimination, used in the generation of rules, are reviewed with respect to their treatment of the issue of quality. Based on this assessment, a hybrid approach, probabilistic inductive learning (PrIL), is presented. It provides a probabilistic measure of goodness for an individual rule, enabling the user to set maximum misclassification levels, or minimum reliability levels, with predetermined confidence that each and every rule will satisfy this criterion. The user is able to quantify the reliability of the decision process, i.e., the invoking of the rules, which is of crucial importance in automated decision processes. PrIL and its associated algorithm are described. An illustrative example based on the claims process at a workers' compensation board is presented.
机译:组织数据库正在用于开发决策的规则或准则。关于规则的处理,对规则生成中使用的两种类型的树归纳算法(总分支和子集消除)进行了回顾。基于此评估,提出了一种混合方法,即概率归纳学习(PrIL)。它为单个规则提供了概率的良好程度度量,使用户可以设置最大误分类级别或最小可靠性级别,并具有预先确定的置信度,即每条规则都将满足该标准。用户能够量化决策过程的可靠性,即规则的调用,这在自动化决策过程中至关重要。描述了PrIL及其相关算法。给出了一个基于工人赔偿委员会的索赔程序的说明性示例。

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