Algorithm to extract direction in 2D discrete distributions and a continuous Frobenius norm
Jeffrey G. Yepez, Jackson D. Seligman, Max A. A. Dornfest, Brian C. Crow, John G. Learned, Viacheslav A. Li

TL;DR
This paper introduces a new algorithm that uses a continuous Frobenius norm to determine the directionality of 2D discrete distributions, with potential applications in physics, astronomy, and machine learning.
Contribution
The paper develops the continuous Frobenius norm (CFND) as an analytical extension of the discrete Frobenius norm (FND) for 2D distributions and demonstrates its effectiveness in direction detection.
Findings
CFND approximates FND for similar Gaussian distributions.
The first-order CFND approximation follows an absolute sine function.
The method successfully estimates directionality in 2D Gaussian-based datasets.
Abstract
In this study, we present a novel algorithm for determining directionality in 2D distributions of discrete data. We compare a reference dataset with a known direction to a measured dataset with an unknown direction by the Frobenius norm of the difference (FND) to find the unknown direction. To generalize this concept, we develop a continuous Frobenius norm of the difference (CFND) as a continuous analog of the FND and derive its analytical expression. By relating fitted and normalized 2D Gaussian distributions, we show that the CFND approximates the FND, and we validate this relationship with computer simulations. We find that a first-order approximation of the CFND between two similar Gaussian distributions takes the form of an absolute sine function, offering a simple analytical form with potential for specialized applications in segmented inverse beta decay (IBD) neutrino detectors,…
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