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Data visualization via latent variables and mixture models: a brief survey

机译:通过潜在变量和混合模型进行数据可视化:简要调查

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摘要

In the literature, data visualization is extensively studied via diverse parametric probabilistic distributions for the exploration of continuous, binary, and counting data. An overview of the existing methods for non-symmetric data matrices is presented in an unified framework via the Bernoulli law and binary variables. An extension to continuous or counting variables is available by using instead any another univariate distribution such as the Poisson or Gaussian one. Several approaches are possible when the model is with a distribution on the rows, the columns, the row clusters, the column clusters, the cells, the blocks, or a transformed matrix of the distances from the pairs of rows or columns. The objective functions are presented with their full expressions in separated sections, one for each method: Kohonen's map and related methods of self-organizing maps, generative topographic mapping as a probabilistic self-organizing map, linear principal component analysis and related matricial methods (non-negative factorization, factorization), probabilistic parametric embedding, probabilistic latent semantic visualization, latent cluster position model, t-distributed stochastic neighbor embedding. The conclusion is a discussion of the contribution with perspectives.
机译:在文献中,通过各种参数概率分布对数据可视化进行了广泛研究,以探索连续数据,二进制数据和计数数据。通过伯努利定律和二进制变量,在统一框架中概述了非对称数据矩阵的现有方法。可以通过使用任何其他单变量分布(例如泊松或高斯分布)来扩展连续变量或计数变量。当模型在行,列,行簇,列簇,单元,块或到成对的行或列的距离的变换矩阵上具有分布时,有几种方法是可行的。目标函数以完整的表达式表示在不同的部分,每种方法一个,其中包括:Kohonen映射和自组织映射的相关方法,生成概率地形图作为概率自组织映射,线性主成分分析和相关矩阵方法(非-负因子分解,因子分解),概率参数嵌入,概率潜在语义可视化,潜在簇位置模型,t分布随机邻居嵌入。结论是用观点讨论贡献。

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