2024
DOI: 10.1093/mnras/stae1088
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Mitigating bias in deep learning: training unbiased models on biased data for the morphological classification of galaxies

Esteban Medina-Rosales,
Guillermo Cabrera-Vives,
Christopher J Miller

Abstract: Galaxy morphologies and their relation with physical properties have been a relevant subject of study in the past. Most galaxy morphology catalogs have been labelled by human annotators or by machine learning models trained on human labelled data. Human generated labels have been shown to contain biases in terms of the observational properties of the data, such as image resolution. These biases are independent of the annotators, that is, are present even in catalogs labelled by experts. In this work, we demons… Show more

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