Distributed Learning of Finite Gaussian Mixtures

Qiong Zhang, Jiahua Chen
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引用次数: 3

Abstract

Advances in information technology have led to extremely large datasets that are often kept in different storage centers. Existing statistical methods must be adapted to overcome the resulting computational obstacles while retaining statistical validity and efficiency. Split-and-conquer approaches have been applied in many areas, including quantile processes, regression analysis, principal eigenspaces, and exponential families. We study split-and-conquer approaches for the distributed learning of finite Gaussian mixtures. We recommend a reduction strategy and develop an effective MM algorithm. The new estimator is shown to be consistent and retains root-n consistency under some general conditions. Experiments based on simulated and real-world data show that the proposed split-and-conquer approach has comparable statistical performance with the global estimator based on the full dataset, if the latter is feasible. It can even slightly outperform the global estimator if the model assumption does not match the real-world data. It also has better statistical and computational performance than some existing methods.
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有限高斯混合的分布式学习
信息技术的进步导致了极其庞大的数据集,这些数据集通常保存在不同的存储中心。必须调整现有的统计方法,以克服由此产生的计算障碍,同时保持统计的有效性和效率。分而治之的方法已经应用于许多领域,包括分位数过程、回归分析、主特征空间和指数族。我们研究了有限高斯混合分布学习的分治方法。我们推荐了一个减少策略,并开发了一个有效的MM算法。在一般条件下,新估计量是相合的,并保持根n相合。基于模拟数据和真实数据的实验表明,如果基于完整数据集的全局估计器可行,所提出的分而治之方法与基于完整数据集的全局估计器具有相当的统计性能。如果模型假设与实际数据不匹配,它甚至可以略微优于全局估计器。与现有的一些方法相比,它具有更好的统计性能和计算性能。
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