Application of the Gaussian mixture model in pulsar astronomy -- pulsar classification and candidates ranking for {\it Fermi} 2FGL catalog
K. J. Lee, L. Guillemot, Y. L. Yue, M. Kramer, D. J. Champion

TL;DR
This paper applies Gaussian mixture models with Bayesian classification to pulsar data, effectively identifying pulsar populations and ranking Fermi gamma-ray sources to aid in pulsar discovery.
Contribution
It introduces a novel application of Gaussian mixture models for pulsar classification and candidate ranking in gamma-ray data, with empirical definitions for millisecond pulsars.
Findings
Six Gaussian clusters model pulsar populations in the P-Ṗ diagram.
Empirical criterion for millisecond pulsars derived from clustering.
Top-ranked Fermi sources are highly enriched with known pulsars.
Abstract
Machine learning, algorithms to extract empirical knowledge from data, can be used to classify data, which is one of the most common tasks in observational astronomy. In this paper, we focus on Bayesian data classification algorithms using the Gaussian mixture model and show two applications in pulsar astronomy. After reviewing the Gaussian mixture model and the related Expectation-Maximization algorithm, we present a data classification method using the Neyman-Pearson test. To demonstrate the method, we apply the algorithm to two classification problems. Firstly, it is applied to the well known period-period derivative diagram, where we find that the pulsar distribution can be modeled with six Gaussian clusters, with two clusters for millisecond pulsars (recycled pulsars) and the rest for normal pulsars. From this distribution, we derive an empirical definition for millisecond pulsars…
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