English

Data compression in cosmology: A compressed likelihood for Planck data

Cosmology and Nongalactic Astrophysics 2019-10-23 v1

Abstract

We apply the massively optimized parameter estimation and data compression technique (MOPED) to the public Planck 2015 temperature likelihood, reducing the dimensions of the data space to one number per parameter of interest. We present CosMOPED, a lightweight and convenient compressed likelihood code implemented in Python. In doing so we show that the <30\ell<30 Planck temperature likelihood can be well approximated by two Gaussian distributed data points, which allows us to replace the map-based low-\ell temperature likelihood by a simple Gaussian likelihood. We make available a Python implementation of Planck's 2015 Plik_lite temperature likelihood that includes these low-\ell binned temperature data (Planck-lite-py). We do not explicitly use the large-scale polarization data in CosMOPED, instead imposing a prior on the optical depth to reionization derived from these data. We show that the Λ\LambdaCDM parameters recovered with CosMOPED are consistent with the uncompressed likelihood to within 0.1σ\sigma, and test that a 7-parameter extended model performs similarly well.

Cite

@article{arxiv.1909.05869,
  title  = {Data compression in cosmology: A compressed likelihood for Planck data},
  author = {Heather Prince and Jo Dunkley},
  journal= {arXiv preprint arXiv:1909.05869},
  year   = {2019}
}

Comments

8 pages, 7 figures, accepted by Phys. Rev. D. For CosMOPED code see https://github.com/heatherprince/cosmoped; for Planck-lite-py see https://github.com/heatherprince/planck-lite-py

R2 v1 2026-06-23T11:13:53.027Z