We provide time- and sample-efficient algorithms for learning and testing latent-tree Ising models, i.e. Ising models that may only be observed at their leaf nodes. On the learning side, we obtain efficient algorithms for learning a tree-structured Ising model whose leaf node distribution is close in Total Variation Distance, improving on the results of prior work. On the testing side, we provide an efficient algorithm with fewer samples for testing whether two latent-tree Ising models have leaf-node distributions that are close or far in Total Variation distance. We obtain our algorithms by showing novel localization results for the total variation distance between the leaf-node distributions of tree-structured Ising models, in terms of their marginals on pairs of leaves.
翻译:我们为学习和测试潜树类树类树类树类模型提供了时间和样本效率算法,即只可在树叶节点上观测到的模型。 在学习方面,我们获得了有效的算法,学习树类结构的树类树类类树类树类树类树类树类模型,其叶类节点分布接近于全变异距离,从而改善了先前工作的结果。在测试方面,我们提供了一种高效的算法,其样本较少,用于测试两个潜树类树类树类树类树类树类树类树类树类树类树类结点分布的分布是否接近或远近于总变异距离。我们通过展示新颖的本地化结果来获取我们的算法,显示树类树类树类树类树类树类树类树类树类树类树类树类树类树类树类树类树类树类的分布分布之间的完全变异距离,即树类树类树类树类的边缘分布。