首页> 外文会议>Hellenic Conference on AI(Artificial Intellignece)(SENTN 2004); 20040505-20040508; Samos; GR >Hierarchical Bayesian Networks: An Approach to Classification and Learning for Structured Data
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Hierarchical Bayesian Networks: An Approach to Classification and Learning for Structured Data

机译:多层贝叶斯网络:一种结构化数据的分类和学习方法

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摘要

Bayesian Networks are one of the most popular formalisms for reasoning under uncertainty. Hierarchical Bayesian Networks (HBNs) are an extension of Bayesian Networks that are able to deal with structured domains, using knowledge about the structure of the data to introduce a bias that can contribute to improving inference and learning methods. In effect, nodes in an HBN are (possibly nested) aggregations of simpler nodes. Every aggregate node is itself an HBN modelling independences inside a subset of the whole world under consideration. In this paper we discuss how HBNs can be used as Bayesian classifiers for structured domains. We also discuss how HBNs can be further extended to model more complex data structures, such as lists or sets, and we present the results of preliminary experiments on the mutagenesis dataset.
机译:贝叶斯网络是不确定性下推理的最受欢迎的形式主义之一。分层贝叶斯网络(HBN)是贝叶斯网络的扩展,能够使用有关数据结构的知识来引入结构化域,从而引入可有助于改善推理和学习方法的偏见。实际上,HBN中的节点是(可能是嵌套的)较简单节点的聚合。每个聚合节点本身都是正在考虑的整个子集中的HBN建模独立性。在本文中,我们讨论了HBN如何用作结构化域的贝叶斯分类器。我们还将讨论如何将HBN进一步扩展以对更复杂的数据结构(例如列表或集合)进行建模,并介绍诱变数据集上的初步实验结果。

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