2020
DOI: 10.48550/arxiv.2007.14843
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Pulsar Candidate Sifting Using Multi-input Convolution Neural Networks

Haitao Lin,
Xiangru Li,
Qingguo Zeng

Abstract: Pulsar candidate sifting is an essential process for discovering new pulsars. It aims to search for the most promising pulsar candidates from an all-sky survey, such as High Time Resolution Universe (HTRU), Green Bank Northern Celestial Cap (GBNCC), Five-hundred-meter Aperture Spherical radio Telescope (FAST), etc. Recently, machine learning (ML) is a hot topic in pulsar candidate sifting investigations. However, one typical challenge in ML for pulsar candidate sifting comes from the learning difficulty arisin… Show more

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Cited by 2 publications
(2 citation statements)
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“…To overcome this challenge, we employed a Convolutional Neural Network as it has been proven by various studies to have excellent classification performance [2,6,12,23,32]. In this work, we construct three CNN models, referred to as MeerCRAB1, MeerCRAB2, and MeerCRAB3.…”
Section: Meercrab: a Real-bogus Intelligent Distinguisher For The Mee...mentioning
confidence: 99%
“…To overcome this challenge, we employed a Convolutional Neural Network as it has been proven by various studies to have excellent classification performance [2,6,12,23,32]. In this work, we construct three CNN models, referred to as MeerCRAB1, MeerCRAB2, and MeerCRAB3.…”
Section: Meercrab: a Real-bogus Intelligent Distinguisher For The Mee...mentioning
confidence: 99%
“…To overcome this challenge, we employed a Convolutional Neural Network as it has been proven by various studies to have excellent classification performance (Gieseke et al 2017;Cabrera-Vives et al 2017;Bellm et al 2019;Vafaei Sadr et al 2019;Lin et al 2020). In this work, we construct three CNN models, referred to as MeerCRAB1, MeerCRAB2, and MeerCRAB3.…”
Section: Labelling Data With Latent Class Model L 𝑙𝑐𝑚mentioning
confidence: 99%