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arxiv: 1612.00752 · v1 · pith:UH2NSKQTnew · submitted 2016-12-02 · 🌌 astro-ph.IM · astro-ph.CO

Non-linear shrinkage estimation of large-scale structure covariance

classification 🌌 astro-ph.IM astro-ph.CO
keywords covarianceestimatorrealisationsshrinkagestructuredatalarge-scalenon-linear
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In many astrophysical settings covariance matrices of large datasets have to be determined empirically from a finite number of mock realisations. The resulting noise degrades inference and precludes it completely if there are fewer realisations than data points. This work applies a recently proposed non-linear shrinkage estimator of covariance to a realistic example from large-scale structure cosmology. After optimising its performance for the usage in likelihood expressions, the shrinkage estimator yields subdominant bias and variance comparable to that of the standard estimator with a factor $\sim 50$ less realisations. This is achieved without any prior information on the properties of the data or the structure of the covariance matrix, at negligible computational cost.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Fewer simulations, sharper covariances: Reducing mock covariance noise with Zeldovich approximation control variates

    astro-ph.CO 2026-05 unverdicted novelty 7.0

    Control variates with Zeldovich mocks reduce covariance matrix variance by up to an order of magnitude on large scales in DESI-like mocks.