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Entropic Trace Estimates for Log Determinants

机译:对数行列式的熵跟踪估计

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The scalable calculation of matrix determinants has been a bottleneck to the widespread application of many machine learning methods such as determinantal point processes, Gaussian processes, generalised Markov random fields, graph models and many others. In this work, we estimate log determinants under the framework of maximum entropy, given information in the form of moment constraints from stochastic trace estimation. The estimates demonstrate a significant improvement on state-of-the-art alternative methods, as shown on a wide variety of matrices from the SparseSuite Matrix Collection. By taking the example of a general Markov random field, we also demonstrate how this approach can significantly accelerate inference in large-scale learning methods involving the log determinant.
机译:矩阵行列式的可伸缩计算已成为许多机器学习方法(例如行列式点过程,高斯过程,广义马尔可夫随机场,图模型等)广泛应用的瓶颈。在这项工作中,我们在最大熵的框架下估计对数行列式,并根据随机轨迹估计的矩约束形式给出信息。正如SparseSuite Matrix Collection的各种矩阵所示,估算值证明了对最新替代方法的显着改进。通过以一般的马尔可夫随机场为例,我们还演示了这种方法如何在涉及对数行列式的大规模学习方法中显着加快推理速度。

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