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Learning Bayesian network parameters under equivalence constraints

机译:在等效约束下学习贝叶斯网络参数

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摘要

We propose a principled approach for learning parameters in Bayesian networks from incomplete datasets, where the examples of a dataset are subject to equivalence constraints. These equivalence constraints arise from datasets where examples are tied together, in that we may not know the value of a particular variable, but whatever that value is, we know it must be the same across different examples. We formalize the problem by defining the notion of a constrained dataset and a corresponding constrained likelihood that we seek to optimize. We further propose a new learning algorithm that can effectively learn more accurate Bayesian networks using equivalence constraints, which we demonstrate empirically. Moreover, we highlight how our general approach can be brought to bear on more specialized learning tasks, such as those in semi-supervised clustering and topic modeling, where more domain-specific approaches were previously developed.
机译:我们提出了一种从不完整的数据集中学习贝叶斯网络参数的原则方法,其中数据集的示例受到等价约束。这些等价约束来自将示例联系在一起的数据集,因为我们可能不知道特定变量的值,但是无论该值是多少,我们都知道在不同示例中它必须相同。我们通过定义约束数据集的概念和我们试图优化的相应约束可能性来形式化问题。我们进一步提出了一种新的学习算法,该算法可以使用等价约束有效地学习更准确的贝叶斯网络,并通过经验进行了证明。此外,我们重点介绍了如何将我们的通用方法应用于更专业的学习任务,例如半监督聚类和主题建模中的任务,而先前已开发了更多针对特定领域的方法。

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