首页> 外文会议>European Conference on Machine Learning(ECML 2007); 20070917-21; Warsaw(PL) >Structure Learning of Probabilistic Relational Models from Incomplete Relational Data
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Structure Learning of Probabilistic Relational Models from Incomplete Relational Data

机译:基于不完整关系数据的概率关系模型的结构学习

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Existing relational learning approaches usually work on complete relational data, but real-world data are often incomplete. This paper proposes the MGDA approach to learn structures of probabilistic relational model (PRM) from incomplete relational data. The missing values are filled in randomly at first, and a maximum likelihood tree (MLT) is generated from the complete data sample. Then, Gibbs sampling is combined with MLT to modify the data and regulate MLT iteratively for obtaining a well-completed data set. Finally, probabilistic structure is learned through dependency analysis from the completed data set. Experiments show that the MGDA approach can learn good structures from incomplete relational data.
机译:现有的关系学习方法通​​常适用于完整的关系数据,但实际数据通常不完整。本文提出了MGDA方法,以从不完整的关系数据中学习概率关系模型(PRM)的结构。首先随机填充缺失值,然后从完整的数据样本中生成最大似然树(MLT)。然后,将Gibbs采样与MLT结合使用以修改数据并反复调节MLT,以获得完整的数据集。最后,通过从完整的数据集中进行依赖性分析来学习概率结构。实验表明,MGDA方法可以从不完整的关系数据中学习良好的结构。

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