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Articles

Robust and Efficient Parametric Spectral Density Estimation for High-Throughput Data

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Pages 30-51 | Received 19 Jun 2018, Accepted 27 Dec 2020, Published online: 06 Apr 2021
 

Abstract

Modern scientific instruments readily record various dynamical phenomena at high frequency and for extended durations. Spanning timescales across several orders of magnitude, such “high-throughput” (HTP) data are routinely analyzed with parametric models in the frequency domain. However, the large size of HTP datasets can render maximum likelihood estimation prohibitively expensive. Moreover, HTP recording devices are operated by extensive electronic circuitry, producing periodic noise to which parameter estimates are highly sensitive. This article proposes to address these issues with a two-stage approach. Preliminary parameter estimates are first obtained by a periodogram variance-stabilizing procedure, for which data compression greatly reduces computational costs with minimal impact to statistical efficiency. Next, a novel test with false discovery rate control eliminates most periodic outliers, to which the second-stage estimator becomes more robust. Extensive simulations and experimental results indicate that for a widely used model in HTP data analysis, a substantial reduction in mean squared error can be expected by applying our methodology.

Supplementary Materials

Software: Implementations of the PSD fitting algorithms and electronic noise removal are provided in the R/C++ package realPSD at https://github.com/mlysy/realPSD.

Additional information

Funding

This research is supported by NSERC grant RGPIN-2014-04225.

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