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Finite Multi-dimensional Generalized Gamma Mixture Model Learning Based on MML

机译:基于MML的有限多维广义伽玛混合模型学习

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In this paper, an unsupervised learning algorithm of a finite multi-dimensional generalized Gamma mixture model (GGMM) is presented to tackle the issue of simultaneously clustering positive vectors and determining the number of clusters. The parameters of the model are estimated using maximum likelihood (ML) which is conducted via expectation maximization (EM) [1]. Newton Raphson's optimization algorithm is also utilized to solve the issue of the non-existence of closed form. Moreover, we developed a method based on Minimum message length (MML) criterion, in order to select the optimal number of clusters which best describes the data. Furthermore, Experiments are conducted using both synthetic data and real data sets of images representing shapes and textures to test the performance of the proposed model.
机译:本文提出了一种有限多维广义Gamma混合模型(GGMM)的无监督学习算法,以解决同时对正向量进行聚类和确定聚类数的问题。使用最大似然(ML)估计模型的参数,该最大似然是通过期望最大化(EM)[1]进行的。牛顿拉夫森的优化算法也被用来解决封闭形式不存在的问题。此外,我们开发了一种基于最小消息长度(MML)准则的方法,以选择最能描述数据的最佳簇数。此外,使用合成数据和代表形状和纹理的图像的真实数据集进行实验,以测试所提出模型的性能。

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