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Hidden Common Cause Relations in Relational Learning

机译:关系学习中隐藏的共因关系

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When predicting class labels for objects within a relational database, it is often helpful to consider a model for relationships: this allows for information between class labels to be shared and to improve prediction performance. However, there are different ways by which objects can be related within a relational database. One traditional way corresponds to a Markov network structure: each existing relation is represented by an undirected edge. This encodes that, conditioned on input features, each object label is independent of other object labels given its neighbors in the graph. However, there is no reason why Markov networks should be the only representation of choice for symmetric dependence structures. Here we discuss the case when relationships are postulated to exist due to hidden common causes. We discuss how the resulting graphical model differs from Markov networks, and how it describes different types of real-world relational processes. A Bayesian nonparametric classification model is built upon this graphical representation and evaluated with several empirical studies.
机译:在预测关系数据库中的对象的类标签时,考虑关系模型通常会有所帮助:这允许在类标签之间共享信息并提高预测性能。但是,可以通过多种方式在关系数据库中关联对象。一种传统方式对应于马尔可夫网络结构:每个现有关系都由无向边表示。这会根据输入要素的条件进行编码,即每个对象标签都独立于其他对象标签(给定其在图形中的邻居)。但是,没有理由为什么马尔可夫网络应该是对称依赖性结构的唯一选择表示。在这里,我们讨论了由于隐藏的常见原因而假定关系存在的情况。我们讨论了生成的图形模型与Markov网络的不同之处,以及它如何描述现实世界中不同类型的关系过程。贝叶斯非参数分类模型建立在此图形表示之上,并通过一些经验研究进行了评估。

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