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Empirical Localization of Homogeneous Divergences on Discrete Sample Spaces

机译:离散样本空间上同质散度的经验定位

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In this paper, we propose a novel parameter estimator for probabilistic models on discrete space. The proposed estimator is derived from minimization of homogeneous divergence and can be constructed without calculation of the normalization constant, which is frequently infeasible for models in the discrete space. We investigate statistical properties of the proposed estimator such as consistency and asymptotic normality, and reveal a relationship with the information geometry. Some experiments show that the proposed estimator attains comparable performance to the maximum likelihood estimator with drastically lower computational cost.
机译:在本文中,我们为离散空间上的概率模型提出了一种新颖的参数估计器。所提出的估计器是从最小均方发散中得出的,可以在不计算归一化常数的情况下构造,这对于离散空间中的模型通常是不可行的。我们调查了提议的估计量的统计属性,如一致性和渐近正态性,并揭示了与信息几何的关系。一些实验表明,所提出的估计器具有与最大似然估计器相当的性能,而计算成本却大大降低。

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