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Online variational learning of finite Dirichlet mixture models

机译:有限Dirichlet混合模型的在线变分学习。

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摘要

In this paper, we present an online variational inference algorithm for finite Dirichlet mixture models learning. Online algorithms allow data points to be processed one at a time, which is important for real-time applications, and also where large scale data sets are involved so that batch processing of all data points at once becomes infeasible. By adopting the variational Bayes framework in an online manner, all the involved parameters and the model complexity (i.e. the number of components) of the Dirichlet mixture model can be estimated simultaneously in a closed form. The proposed algorithm is validated through both synthetic data sets and a challenging real-world application namely video background subtraction.
机译:在本文中,我们提出了一种用于有限Dirichlet混合模型学习的在线变分推理算法。在线算法允许一次处理一个数据点,这对于实时应用程序以及涉及大规模数据集的一次处理都很重要,因此一次批量处理所有数据点变得不可行。通过以在线方式采用变分贝叶斯框架,可以以封闭形式同时估算Dirichlet混合模型的所有相关参数和模型复杂性(即组件数)。该算法通过合成数据集和具有挑战性的实际应用(即视频背景减法)进行了验证。

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