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Theory and Methods

Parsimonious Model Averaging With a Diverging Number of Parameters

, , &
Pages 972-984 | Received 10 Aug 2017, Accepted 06 Mar 2019, Published online: 19 Jun 2019
 

Abstract

Model averaging generally provides better predictions than model selection, but the existing model averaging methods cannot lead to parsimonious models. Parsimony is an especially important property when the number of parameters is large. To achieve a parsimonious model averaging coefficient estimator, we suggest a novel criterion for choosing weights. Asymptotic properties are derived in two practical scenarios: (i) one or more correct models exist in the candidate model set and (ii) all candidate models are misspecified. Under the former scenario, it is proved that our method can put the weight one to the smallest correct model and the resulting model averaging estimators of coefficients have many zeros and thus lead to a parsimonious model. The asymptotic distribution of the estimators is also provided. Under the latter scenario, prediction is mainly focused on and we prove that the proposed procedure is asymptotically optimal in the sense that its squared prediction loss and risk are asymptotically identical to those of the best—but infeasible—model averaging estimator. Numerical analysis shows the promise of the proposed procedure over existing model averaging and selection methods.

Acknowledgments

The authors thank the co-editor, an associate editor, and two referees for their insightful suggestions and comments that have substantially improved an earlier version of this article.

Additional information

Funding

Zhang was supported by the National Natural Science Foundation of China (NNSFC) (Grant nos. 71522004, 11471324, and 71631008). Zou was supported by NNSFC (Grant no. 11331011) and the Ministry of Science and Technology of China (Grant no. 2016YFB0502301). Liang was supported by NSF grant DMS-1620898, and Award Number 11529101 made by NNSFC. Carroll’s research was supported by a grant from the National Cancer Institute (U01-CA057030).

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