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Learning probability density functions from marginal distributions with applications to Gaussian mixtures

机译:从边际分布学习概率密度函数并应用于高斯混合

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Probability density function (PDF) estimation is a constantly important topic in the fields related to artificial intelligence and machine learning. This paper is dedicated to considering problems on the estimation of a density function simply from its marginal distributions. The possibility of the learning problem is first investigated and a uniqueness proposition involving a large family of distribution functions is proposed. The learning problem is then reformulated into an optimization task which is studied and applied to Gaussian mixture models (GMM) via the generalized expectation maximization procedure (GEM) and Monte Carlo method. Experimental results show that our approach for GMM, only using partial information of the coordinates of the samples, can obtain satisfactory performance, which in turn verifies the proposed reformulation and proposition.
机译:概率密度函数(PDF)估计是与人工智能和机器学习有关的字段中的不断重要的话题。本文旨在考虑估计密度函数的问题,即用其边际分布。首先研究了学习问题的可能性,提出了涉及大家庭分布函数的独特性主张。然后通过广义期望最大化程序(GEM)和Monte Carlo方法将学习问题重新重构为研究和应用于高斯混合模型(GMM)的优化任务。实验结果表明,我们的GMM方法仅使用样品坐标的部分信息,可以获得令人满意的性能,这反过来验证了建议的重构和主张。

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