资源论文Block Variable Selection in Multivariate Regression and High-dimensional Causal Inference

Block Variable Selection in Multivariate Regression and High-dimensional Causal Inference

2020-01-06 | |  55 |   36 |   0

Abstract

We consider multivariate regression problems involving high-dimensional predictor and response spaces. To efficiently address such problems, we propose a variable selection method, Multivariate Group Orthogonal Matching Pursuit, which extends the standard Orthogonal Matching Pursuit technique. This extension accounts for arbitrary sparsity patterns induced by domain-specific groupings over both input and output variables, while also taking advantage of the correlation that may exist between the multiple outputs. Within this framework, we then formulate the problem of inferring causal relationships over a collection of high-dimensional time series variables. When applied to time-evolving social media content, our models yield a new family of causality-based influence measures that may be seen as an alternative to the classic PageRank algorithm traditionally applied to hyperlink graphs. Theoretical guarantees, extensive simulations and empirical studies confirm the generality and value of our framework.

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