A partial graphical model with a structural prior on the direct links between predictors and responses

IF 0.6 4区 数学 Q4 STATISTICS & PROBABILITY
Eunice Okome Obiang, Pascal J'ez'equel, F. Proïa
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引用次数: 2

Abstract

This paper is devoted to the estimation of a partial graphical model with a structural Bayesian penalization. Precisely, we are interested in the linear regression setting where the estimation is made through the direct links between potentially high-dimensional predictors and multiple responses, since it is known that Gaussian graphical models enable to exhibit direct links only, whereas coefficients in linear regressions contain both direct and indirect relations (due e.g. to strong correlations among the variables). A smooth penalty reflecting a generalized Gaussian Bayesian prior on the covariates is added, either enforcing patterns (like row structures) in the direct links or regulating the joint influence of predictors. We give a theoretical guarantee for our method, taking the form of an upper bound on the estimation error arising with high probability, provided that the model is suitably regularized. Empirical studies on synthetic data and a real dataset are conducted.
在预测者和响应之间的直接联系上具有结构先验的部分图形模型
研究了具有结构贝叶斯惩罚的部分图模型的估计问题。确切地说,我们对线性回归设置感兴趣,其中通过潜在的高维预测因子和多个响应之间的直接联系进行估计,因为众所周知,高斯图形模型只能显示直接联系,而线性回归中的系数包含直接和间接关系(例如,由于变量之间的强相关性)。添加了反映协变量上的广义高斯贝叶斯先验的平滑惩罚,要么在直接链接中强制模式(如行结构),要么调节预测器的联合影响。在模型适当正则化的条件下,以高概率估计误差的上界的形式给出了该方法的理论保证。对合成数据和真实数据集进行了实证研究。
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来源期刊
Esaim-Probability and Statistics
Esaim-Probability and Statistics STATISTICS & PROBABILITY-
CiteScore
1.00
自引率
0.00%
发文量
14
审稿时长
>12 weeks
期刊介绍: The journal publishes original research and survey papers in the area of Probability and Statistics. It covers theoretical and practical aspects, in any field of these domains. Of particular interest are methodological developments with application in other scientific areas, for example Biology and Genetics, Information Theory, Finance, Bioinformatics, Random structures and Random graphs, Econometrics, Physics. Long papers are very welcome. Indeed, we intend to develop the journal in the direction of applications and to open it to various fields where random mathematical modelling is important. In particular we will call (survey) papers in these areas, in order to make the random community aware of important problems of both theoretical and practical interest. We all know that many recent fascinating developments in Probability and Statistics are coming from "the outside" and we think that ESAIM: P&S should be a good entry point for such exchanges. Of course this does not mean that the journal will be only devoted to practical aspects.
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