Detection of Dispersed Radio Pulses: A machine learning approach to candidate identification and classification
Thomas Devine, Katerina Goseva-Popstojanova, Maura McLaughlin

TL;DR
This paper introduces a novel two-stage machine learning approach for detecting and classifying dispersed radio pulses in astronomical data, improving accuracy and enabling potential new pulsar discoveries.
Contribution
It presents a new peak identification algorithm and benchmarks multiple classifiers, identifying the most effective methods for large-scale pulsar candidate classification.
Findings
Classifiers with imbalance treatments had higher recall.
Multiclass ensemble tree classifiers with oversampling performed best.
Six potential new pulsar discoveries were made.
Abstract
Searching for extraterrestrial, transient signals in astronomical data sets is an active area of current research. However, machine learning techniques are lacking in the literature concerning single-pulse detection. This paper presents a new, two-stage approach for identifying and classifying dispersed pulse groups (DPGs) in single-pulse search output. The first stage identified DPGs and extracted features to characterize them using a new peak identification algorithm which tracks sloping tendencies around local maxima in plots of signal-to-noise ratio vs. dispersion measure. The second stage used supervised machine learning to classify DPGs. We created four benchmark data sets: one unbalanced and three balanced versions using three different imbalance treatments.We empirically evaluated 48 classifiers by training and testing binary and multiclass versions of six machine learning…
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