IMLGMay 18, 2023

MiraBest: A Dataset of Morphologically Classified Radio Galaxies for Machine Learning

arXiv:2305.11108v115 citations
Originality Synthesis-oriented
AI Analysis

This provides a standardized dataset for astronomers and machine learning researchers to evaluate and compare methods, though it is incremental as it builds on existing catalogues.

The authors introduced MiraBest, a publicly available dataset of 1256 radio-loud AGN with manual morphological classifications, designed for machine learning applications in astronomy to address the lack of standardized datasets for algorithm assessment.

The volume of data from current and future observatories has motivated the increased development and application of automated machine learning methodologies for astronomy. However, less attention has been given to the production of standardised datasets for assessing the performance of different machine learning algorithms within astronomy and astrophysics. Here we describe in detail the MiraBest dataset, a publicly available batched dataset of 1256 radio-loud AGN from NVSS and FIRST, filtered to $0.03 < z < 0.1$, manually labelled by Miraghaei and Best (2017) according to the Fanaroff-Riley morphological classification, created for machine learning applications and compatible for use with standard deep learning libraries. We outline the principles underlying the construction of the dataset, the sample selection and pre-processing methodology, dataset structure and composition, as well as a comparison of MiraBest to other datasets used in the literature. Existing applications that utilise the MiraBest dataset are reviewed, and an extended dataset of 2100 sources is created by cross-matching MiraBest with other catalogues of radio-loud AGN that have been used more widely in the literature for machine learning applications.

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