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Leveraging unlabeled data with a probabilistic graphical model

机译:利用概率图形模型利用未标记的数据

摘要

A general probabilistic formulation referred to as ‘Conditional Harmonic Mixing’ is provided, in which links between classification nodes are directed, a conditional probability matrix is associated with each link, and where the numbers of classes can vary from node to node. A posterior class probability at each node is updated by minimizing a divergence between its distribution and that predicted by its neighbors. For arbitrary graphs, as long as each unlabeled point is reachable from at least one training point, a solution generally always exists, is unique, and can be found by solving a sparse linear system iteratively. In one aspect, an automated data classification system is provided. The system includes a data set having at least one labeled category node in the data set. A semi-supervised learning component employs directed arcs to determine the label of at least one other unlabeled category node in the data set.
机译:提供了一种称为“条件谐波混合”的一般概率公式,其中定向分类节点之间的链接,每个链接关联一个条件概率矩阵,并且每个节点的类数可以变化。通过最小化每个节点的分布与其邻居预测的差异,可以更新每个节点的后验概率。对于任意图,只要每个未标记的点都可以从至少一个训练点到达,则通常总是存在一个解,它是唯一的,并且可以通过迭代求解稀疏线性系统来找到。一方面,提供了一种自动数据分类系统。该系统包括一个数据集,该数据集在数据集中具有至少一个标记的类别节点。半监督学习组件采用有向弧来确定数据集中至少一个其他未标记类别节点的标记。

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