Fewer Mocks and Less Noise: Reducing the Dimensionality of Cosmological Observables with Subspace Projections
Oliver H. E. Philcox, Mikhail M. Ivanov, Matias Zaldarriaga, Marko, Simonovic, Marcel Schmittfull

TL;DR
This paper introduces a subspace projection method to compress cosmological observables, significantly reducing noise and the number of mocks needed for accurate covariance estimation, while preserving full likelihood information.
Contribution
The authors develop a model-specific subspace projection technique that captures nearly all constraining power with fewer dimensions, improving covariance matrix estimation in cosmology.
Findings
96-bin power spectra reduced to 12 coefficients without bias
Accurate parameter inference with only ~100 mocks
Bispectrum compressed into ~10 coefficients for efficient analysis
Abstract
Creating accurate and low-noise covariance matrices represents a formidable challenge in modern-day cosmology. We present a formalism to compress arbitrary observables into a small number of bins by projection into a model-specific subspace that minimizes the prior-averaged log-likelihood error. The lower dimensionality leads to a dramatic reduction in covariance matrix noise, significantly reducing the number of mocks that need to be computed. Given a theory model, a set of priors, and a simple model of the covariance, our method works by using singular value decompositions to construct a basis for the observable that is close to Euclidean; by restricting to the first few basis vectors, we can capture almost all the constraining power in a lower-dimensional subspace. Unlike conventional approaches, the method can be tailored for specific analyses and captures non-linearities that are…
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