Neural posterior estimation of the neutrino direction in IceCube using transformer-encoded normalizing flows on the sphere
R. Abbasi, M. Ackermann, J. Adams, J. A. Aguilar, M. Ahlers, J.M. Alameddine, S. Ali, N. M. Amin, K. Andeen, C. Arg\"uelles, Y. Ashida, S. Athanasiadou, S. N. Axani, R. Babu, X. Bai, A. Balagopal V., S. W. Barwick, V. Basu, R. Bay, J. J. Beatty, J. Becker Tjus, P. Behrens

TL;DR
This paper introduces a transformer-encoded normalizing flow approach for neutrino direction reconstruction in IceCube, achieving state-of-the-art angular resolution with faster computation than traditional methods.
Contribution
It presents a novel spherical normalizing flow model combined with transformer encoders, significantly improving angular resolution and speed over existing likelihood-based reconstructions.
Findings
Achieves new state-of-the-art angular resolution for IceCube neutrino events.
Speeds up all-sky scans to seconds, independent of posterior size.
Outperforms likelihood reconstructions for energies above 100 GeV.
Abstract
IceCube is a cubic-kilometer-scale neutrino detector located at the geographic South Pole. A precise directional reconstruction of IceCube neutrinos is vital for associations with astronomical objects. In this context, we discuss neural posterior estimation of the neutrino direction via a transformer encoder that maps to a normalizing flow on the 2-sphere. It achieves a new state-of-the-art angular resolution for the two main event morphologies in IceCube - tracks and showers - while being significantly faster than traditional B-spline-based likelihood reconstructions. All-sky scans can be performed within seconds rather than hours, and take constant computation time, regardless of whether the posterior extent is arc-minutes or spans the whole sky. We utilize a combination of -smooth rational-quadratic splines, scale transformations and rotations to define a novel spherical…
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