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Visualisation of structured data through generative probabilistic modeling

机译:通过生成概率建模可视化结构化数据

摘要

This thesis is concerned with the construction of topographic maps of structured data. A probabilistic generative model-based approach is taken, inspired by the GTM algorithm. De- pending on the data at hand, the form of a probabilistic generative model is specified that is appropriate for modelling the probability density of the data. A mixture of such models is formulated which is topographically constrained on a low-dimensional latent space. By con- strained, we mean that each point in the latent space determines the parameters of one model via a smooth non-linear mapping; by topographic, we mean that neighbouring latent points gen- erate similar parameters which address statistically similar models. The constrained mixture is trained to model the density of the structured data. A map is constructed by projecting each data item to a location on the latent space where the local latent points are associated with models that express a high probability of having generated the particular data item. We present three formulations for constructing topographic maps of structured data. Two of them are concerned with tree-structured data and employ hidden Markov trees and Markov trees as probabilistic generative models. The third approach is concerned with astronomical light curves from eclipsing binary stars and employs a physical-based model. The formulation of the all three models is accompanied by experiments and analysis of the resulting topographic maps.
机译:本文涉及结构化数据地形图的构建。在GTM算法的启发下,采用了一种基于概率生成模型的方法。根据手头的数据,指定了概率生成模型的形式,该形式适合于对数据的概率密度进行建模。配制了这些模型的混合物,这些模型在地形上限制在低维潜在空间上。所谓约束,是指潜在空间中的每个点都通过平滑的非线性映射来确定一个模型的参数。通过地形学,我们的意思是相邻的潜在点会生成相似的参数,这些参数处理统计学上相似的模型。对受约束的混合物进行训练以对结构化数据的密度进行建模。通过将每个数据项投影到潜在空间上的位置来构造地图,在该位置上,本地潜在点与表示已生成特定数据项的可能性很高的模型相关联。我们提出了三种构造结构化数据地形图的方法。其中两个与树状结构数据有关,并采用隐马尔可夫树和马尔可夫树作为概率生成模型。第三种方法涉及使双星黯然失色的天文光曲线,并采用基于物理的模型。所有这三个模型的制定都伴随着实验和对最终地形图的分析。

著录项

  • 作者

    Gianniotis Nikolaos;

  • 作者单位
  • 年度 2008
  • 总页数
  • 原文格式 PDF
  • 正文语种 English
  • 中图分类

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