IPAD: Stable Interpretable Forecasting with Knockoffs Inference

50 Pages Posted: 24 Sep 2018 Last revised: 3 Oct 2018

See all articles by Yingying Fan

Yingying Fan

University of Southern California - Marshall school of Business

Jinchi Lv

University of Southern California - Marshall School of Business

Mahrad Sharifvaghefi

University of Pittsburgh - Department of Economics

Yoshimasa Uematsu

affiliation not provided to SSRN

Date Written: September 5, 2018

Abstract

Interpretability and stability are two important features that are desired in many contemporary big data applications arising in economics and finance. While the former is enjoyed to some extent by many existing forecasting approaches, the latter in the sense of controlling the fraction of wrongly discovered features which can enhance greatly the interpretability is still largely underdeveloped in the econometric settings. To this end, in this paper we exploit the general framework of model-X knockoffs introduced recently in Cand\`{e}s, Fan, Janson and Lv (2018), which is nonconventional for reproducible large-scale inference in that the framework is completely free of the use of p-values for significance testing, and suggest a new method of intertwined probabilistic factors decoupling (IPAD) for stable interpretable forecasting with knockoffs inference in high-dimensional models. The recipe of the method is constructing the knockoff variables by assuming a latent factor model that is exploited widely in economics and finance for the association structure of covariates. Our method and work are distinct from the existing literature in that we estimate the covariate distribution from data instead of assuming that it is known when constructing the knockoff variables, our procedure does not require any sample splitting, we provide theoretical justifications on the asymptotic false discovery rate control, and the theory for the power analysis is also established. Several simulation examples and the real data analysis further demonstrate that the newly suggested method has appealing finite-sample performance with desired interpretability and stability compared to some popularly used forecasting methods.

Keywords: Reproducibility, Power, Big Data, Interpretable Forecasting, Stability, Latent Factors, Model-X Knockoffs, Large-Scale Inference and FDR, Scalability, Intertwined Probabilistic Factors Decoupling, Lasso and Random Forest

Suggested Citation

Fan, Yingying and Lv, Jinchi and Sharifvaghefi, Mahrad and Uematsu, Yoshimasa, IPAD: Stable Interpretable Forecasting with Knockoffs Inference (September 5, 2018). Available at SSRN: https://ssrn.com/abstract=3245137 or http://dx.doi.org/10.2139/ssrn.3245137

Yingying Fan

University of Southern California - Marshall school of Business ( email )

Marshall School of Business
BRI 401, 3670 Trousdale Parkway
Los Angeles, CA 90089
United States

HOME PAGE: http://www-rcf.usc.edu/~fanyingy

Jinchi Lv

University of Southern California - Marshall School of Business ( email )

701 Exposition Blvd
Los Angeles, CA California 90089
United States

HOME PAGE: http://www-rcf.usc.edu/~jinchilv

Mahrad Sharifvaghefi

University of Pittsburgh - Department of Economics ( email )

Pittsburgh, PA
United States

Yoshimasa Uematsu (Contact Author)

affiliation not provided to SSRN

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