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Learning Recursive Bayesian Multinets for Data Clustering by Means of Constructive Induction

机译:构造性归纳法学习递归贝叶斯多网数据聚类

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摘要

This paper introduces and evaluates a new class of knowledge model, the recursive Bayesian multinet (RBMN), which encodes the joint probability distribution of a given database. RBMNs extend Bayesian networks (BNs) as well as partitional clustering systems. Briefly, a RBMN is a decision tree with component BNs at the leaves. A RBMN is learnt using a greedy, heuristic approach akin to that used by many supervised decision tree learners, but where BNs are learnt at leaves using constructive induction. A key idea is to treat expected data as real data.
机译:本文介绍并评估了一种新的知识模型,即递归贝叶斯多网(RBMN),它对给定数据库的联合概率分布进行编码。 RBMN扩展了贝叶斯网络(BN)以及分区集群系统。简而言之,RBMN是在叶子处具有组件BN的决策树。使用贪婪的启发式方法来学习RBMN,类似于许多受监督的决策树学习者所使用的方法,但是使用构造性归纳法在叶子处学习BN。一个关键的想法是将预期数据视为真实数据。

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