Literature DB >> 32863459

Distributed Simultaneous Inference in Generalized Linear Models via Confidence Distribution.

Lu Tang1, Ling Zhou2, Peter X-K Song3.   

Abstract

We propose a distributed method for simultaneous inference for datasets with sample size much larger than the number of covariates, i.e., N ≫ p, in the generalized linear models framework. When such datasets are too big to be analyzed entirely by a single centralized computer, or when datasets are already stored in distributed database systems, the strategy of divide-and-combine has been the method of choice for scalability. Due to partition, the sub-dataset sample sizes may be uneven and some possibly close to p, which calls for regularization techniques to improve numerical stability. However, there is a lack of clear theoretical justification and practical guidelines to combine results obtained from separate regularized estimators, especially when the final objective is simultaneous inference for a group of regression parameters. In this paper, we develop a strategy to combine bias-corrected lasso-type estimates by using confidence distributions. We show that the resulting combined estimator achieves the same estimation efficiency as that of the maximum likelihood estimator using the centralized data. As demonstrated by simulated and real data examples, our divide-and-combine method yields nearly identical inference as the centralized benchmark.

Entities:  

Keywords:  Bias correction; Confidence distribution; Inference; Lasso; Meta-analysis; Parallel computing

Year:  2019        PMID: 32863459      PMCID: PMC7453826          DOI: 10.1016/j.jmva.2019.104567

Source DB:  PubMed          Journal:  J Multivar Anal        ISSN: 0047-259X            Impact factor:   1.473


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