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Learning Binary Latent Variable Models: A Tensor Eigenpair Approach

机译:学习二进制潜变量模型:张量特征探

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Latent variable models with hidden binary units appear in various applications. Learning such models, in particular in the presence of noise, is a challenging computational problem. In this paper we propose a novel spectral approach to this problem, based on the eigenvectors of both the second order moment matrix and third order moment tensor of the observed data. We prove that under mild non-degeneracy conditions, our method consistently estimates the model parameters at the optimal parametric rate. Our tensor-based method generalizes previous orthogonal tensor decomposition approaches, where the hidden units were assumed to be either statistically independent or mutually exclusive. We illustrate the consistency of our method on simulated data and demonstrate its usefulness in learning a common model for population mixtures in genetics.
机译:具有隐藏二进制单元的潜在变量模型出现在各种应用中。学习这种模型,特别是在存在噪声的情况下是一个具有挑战性的计算问题。在本文中,我们提出了一种新的谱方法,基于观察数据的二阶矩阵和三阶时刻张量的特征向量。我们证明,在温和的非退化条件下,我们的方法始终如一地估计最佳参数速率的模型参数。我们的张量的方法概括了以前的正交张量分解方法,其中隐藏的单位被认为是统计上独立的或互斥的。我们说明了我们对模拟数据的方法的一致性,并证明了其在学习遗传学中种群混合物的共同模型方面的用量。

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