David I Inouye, Pradeep Ravikumar, Inderjit S Dhillon
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引用次数: 0
摘要
我们开发了平方根图形模型(SQR),这是一类新的参数图形模型,它提供了单变量指数族分布的多元推广。以前的多变量图形模型(Yang et al., 2015)不允许指数和泊松推广的正依赖关系。然而,在许多真实世界的数据集中,变量显然具有正相关性。例如,纽约机场的延误时间(建模为指数分布)与波士顿的延误时间呈正相关。有了这个动机,我们给出了一个模型类的例子,该模型类来源于单变量指数分布,它允许几乎任意的正相关和负相关,而参数矩阵只有一个温和的条件——一个类似于高斯协方差矩阵的正确定性的条件。我们的泊松泛化允许正依赖和负依赖,而不受参数值的任何约束。我们也发展了参数估计方法使用节点明智的回归与1正则化和似然逼近方法使用抽样。最后,我们在一个合成数据集和一个真实的机场延误时间数据集上证明了我们的指数泛化。
Square Root Graphical Models: Multivariate Generalizations of Univariate Exponential Families that Permit Positive Dependencies.
We develop Square Root Graphical Models (SQR), a novel class of parametric graphical models that provides multivariate generalizations of univariate exponential family distributions. Previous multivariate graphical models (Yang et al., 2015) did not allow positive dependencies for the exponential and Poisson generalizations. However, in many real-world datasets, variables clearly have positive dependencies. For example, the airport delay time in New York-modeled as an exponential distribution-is positively related to the delay time in Boston. With this motivation, we give an example of our model class derived from the univariate exponential distribution that allows for almost arbitrary positive and negative dependencies with only a mild condition on the parameter matrix-a condition akin to the positive definiteness of the Gaussian covariance matrix. Our Poisson generalization allows for both positive and negative dependencies without any constraints on the parameter values. We also develop parameter estimation methods using node-wise regressions with ℓ1 regularization and likelihood approximation methods using sampling. Finally, we demonstrate our exponential generalization on a synthetic dataset and a real-world dataset of airport delay times.