Constraints on primordial non-Gaussianity from halo bias measured through CMB lensing cross-correlations
Abstract
Local non-Gaussianities in the initial conditions of the Universe, parameterized by f NL, induce a scale-dependence in the large-scale bias of halos in the late Universe. This effect is a promising path to constrain multi-field inflation theories that predict non-zero f NL. While most existing constraints from the halo bias involve auto-correlations of the galaxy distribution, cross-correlations with probes of the matter density provide an alternative channel with fewer systematics. We present the strongest large-scale structure constraint on local primordial non-Gaussianity that uses cross-correlations alone. We use the cosmic infrared background (CIB) consisting of dusty galaxies as a halo tracer and cosmic microwave background (CMB) lensing as a probe of the underlying matter distribution, both from Planck data. Milky Way dust is a key challenge in using the large-scale modes of the CIB. Importantly, the cross-correlation of the CIB with CMB lensing is far less affected by Galactic dust compared to the CIB auto-spectrum, which picks up an additive bias from Galactic dust. We find no evidence for primordial non-Gaussianity and find -87<f NL<19 with a Gaussian σ(f NL)≈ 41, assuming universality of the halo mass function. We find that future CMB lensing data from Simons Observatory and CMB-S4 could achieve σ(f NL) of 23 and 20 respectively. The constraining power of such an analysis is limited by current Galactic dust cleaning techniques, requiring us to use a minimum multipole of =70. If this challenge is overcome with improved analysis techniques or external data, constraints as tight as σ(f NL)=4 can be achieved through the cross-correlation technique. More optimistically, constraints better than σ(f NL)=2 could be achieved if the CIB auto-spectrum is dust-free down to the largest scales.
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