Abstract

Context.In current astronomical surveys with ever-increasing data volumes, automated methods are essential. Objects of known classes from the literature are necessary to train supervised machine-learning algorithms and to verify and validate their results.Aims.The primary goal of this work is to provide a comprehensive data set of known variable objects from the literature that we cross-match withGaiaDR3 sources, including a large number of variability types and representatives, in order to cover sky regions and magnitude ranges relevant to each class in the best way. In addition, non-variable objects from selected surveys are targeted to probe their variability inGaiaand possible use as standards. This data set can be the base for a training set that can be applied to variability detection, classification, and validation.Methods.A statistical method that employed astrometry (position and proper motion) and photometry (mean magnitude) was applied to selected literature catalogues in order to identify the correct counterparts of known objects in theGaiadata. The cross-match strategy was adapted to the properties of each catalogue, and the verification of results excluded dubious matches.Results.Our catalogue gathers 7 841 723Gaiasources, 1.2 million of which are non-variable objects and 1.7 million are galaxies, in addition to 4.9 million variable sources. This represents over 100 variability (sub)types.Conclusions.This data set served the requirements of theGaiavariability pipeline for its third data release (DR3) from classifier training to result validation, and it is expected to be a useful resource for the scientific community that is interested in the analysis of variability in theGaiadata and other surveys.

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