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Random function priors for exchangeable arrays with applications to graphs and relational data

机译:可交换数组的随机函数先验及其在图形和关系数据中的应用

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A fundamental problem in the analysis of structured relational data like graphs, networks, databases, and matrices is to extract a summary of the common structure underlying relations between individual entities. Relational data are typically encoded in the form of arrays; invariance to the ordering of rows and columns corresponds to exchangeable arrays. Results in probability theory due to Aldous, Hoover and Kallenberg show that exchangeable arrays can be represented in terms of a random measurable function which constitutes the natural model parameter in a Bayesian model. We obtain a flexible yet simple Bayesian nonparametric model by placing a Gaussian process prior on the parameter function. Efficient inference utilises elliptical slice sampling combined with a random sparse approximation to the Gaussian process. We demonstrate applications of the model to network data and clarify its relation to models in the literature, several of which emerge as special cases.
机译:分析结构化关系数据(如图形,网络,数据库和矩阵)时,一个基本问题是提取单个实体之间关系基础的通用结构的摘要。关系数据通常以数组的形式编码。行和列顺序的不变性对应于可交换数组。由Aldous,Hoover和Kallenberg提出的概率论结果表明,可交换数组可以用构成贝叶斯模型中自然模型参数的随机可测量函数表示。通过将高斯过程放在参数函数的前面,我们获得了灵活而简单的贝叶斯非参数模型。有效的推论是利用椭圆切片采样与对高斯过程的随机稀疏近似相结合。我们演示了该模型在网络数据中的应用,并在文献中阐明了它与模型的关系,其中有几种是特例。

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