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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Parameter estimation of Poisson mixture with automated model selection through BYY harmony learning
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Parameter estimation of Poisson mixture with automated model selection through BYY harmony learning

机译:通过BYY和声学习自动选择模型的泊松混合物参数估计

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摘要

Finite mixture is widely used in the fields of information processing and data analysis. However, its model selection, i.e., the selection of components in the Mixture for a given sample data set, has been still a rather difficult task. Recently, the Bayesian Ying-Yang (BYY) harmony learning has provided a new approach to the Gaussian mixture modeling with a favorite feature that model selection can be made automatically during parameter learning. In this paper, based on the same BYY harmony learning framework for finite mixture, we propose an adaptive gradient BYY learning algorithm for Poisson mixture with automated model selection. It is demonstrated well by the simulation experiments that this adaptive gradient BYY learning algorithm can automatically determine the number of actual Poisson components for a sample data set, with a good estimation of the parameters in the Original or true mixture where the components are separated in a certain degree. Moreover, the adaptive gradient BYY learning algorithm is successfully applied to texture classification.
机译:有限混合广泛应用于信息处理和数据分析领域。但是,其模型选择,即对于给定的样品数据集,在混合物中选择组分仍然是相当困难的任务。最近,贝叶斯盈阳(BYY)和声学习为高斯混合建模提供了一种新方法,该函数具有最喜欢的功能,即在参数学习过程中可以自动进行模型选择。本文基于有限混合的相同BYY和声学习框架,提出了一种带有自动模型选择的泊松混合自适应梯度BYY学习算法。通过仿真实验很好地证明了这种自适应梯度BYY学习算法可以自动确定样本数据集的实际Poisson分量的数量,并且可以很好地估计原始或真实混合物中的参数,这些分量以一定程度。此外,自适应梯度BYY学习算法已成功应用于纹理分类。

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