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High-Dimensional Knockoffs Inference for Time Series Data.

Chien-Ming Chi1, Yingying Fan2, Ching-Kang Ing3

  • 1Institute of Statistical Science, Academia Sinica, Taiwan.

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|August 26, 2025
PubMed
Summary
This summary is machine-generated.

We introduce time series knockoffs inference (TSKI), a novel method for robust feature selection in time series data. TSKI addresses serial dependence and unknown covariate distributions, controlling the false discovery rate (FDR).

Keywords:
E-valuesFDR controlHigh dimensionalityInterpretable forecastingModel-X knockoffsPower analysisSparsityTime series

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Area of Science:

  • Statistics
  • Time Series Analysis
  • Machine Learning

Background:

  • Model-X knockoffs inference is a powerful tool for feature selection but faces challenges with time series data due to serial dependence.
  • Existing methods often require stringent assumptions about covariate distributions, which are impractical for real-world time series.
  • Addressing these limitations is crucial for reliable feature selection in dynamic systems.

Purpose of the Study:

  • To establish a theoretical and methodological foundation for knockoffs inference specifically tailored for time series data.
  • To develop a novel method, time series knockoffs inference (TSKI), that overcomes the limitations of existing approaches.
  • To ensure robust feature selection by controlling the false discovery rate (FDR) under challenging time series conditions.

Main Methods:

  • Proposed time series knockoffs inference (TSKI) by integrating subsampling and e-values to manage serial dependence.
  • Generalized robust knockoffs inference to relax the assumption of known covariate distributions, making it suitable for time series.
  • Established theoretical conditions for asymptotic false discovery rate (FDR) control and conducted power analysis using Lasso.

Main Results:

  • Demonstrated that TSKI effectively controls the asymptotic false discovery rate (FDR) under sufficient conditions.
  • Quantified the impact of serial dependence and unknown covariate distributions on FDR control through technical analysis.
  • Validated the finite-sample performance of TSKI via simulations and an economic inflation study.

Conclusions:

  • TSKI provides a robust and theoretically sound framework for feature selection in time series data.
  • The method successfully addresses the complexities of serial dependence and unknown covariate distributions.
  • TSKI offers a practical solution for reliable inference in time series analysis, as evidenced by empirical evaluations.