Compressed Python likelihood for large scale temperature and polarization from Planck
Author(s): Prince, Heather; Dunkley, Jo
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Abstract: | We present Planck-low-py, a binned low-` temperature and E-mode polarization likelihood, as an option to facilitate ease of use of the Planck 2018 large-scale data in joint-probe analysis and forecasting. It is written in Python and compresses the ` < 30 temperature and polarization angular power spectra information from Planck into two log-normal bins in temperature and three in polarization. These angular scales constrain the optical depth to reionization and provide a lever arm to constrain the tilt of the primordial power spectrum. We show that cosmological constraints on ΛCDM model parameters using Planck-low-py are consistent with those derived with the full Commander and SimAll likelihoods from the Planck legacy release. |
Publication Date: | 13-Jan-2022 |
Electronic Publication Date: | 13-Jan-2022 |
Citation: | Prince, Heather, Dunkley, Jo. (Compressed Python likelihood for large scale temperature and polarization from <i>Planck</i>. Physical Review D, 105 (2), 10.1103/physrevd.105.023518 |
DOI: | doi:10.1103/physrevd.105.023518 |
ISSN: | 2470-0010 |
EISSN: | 2470-0029 |
Language: | en |
Type of Material: | Journal Article |
Journal/Proceeding Title: | Physical Review D |
Version: | Author's manuscript |
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