Detecting wide binaries using machine learning algorithms
Abstract
Supervised machine learning models trained on wide binary catalogs classify stellar systems using Gaia DR3 data with high accuracy and recall through preprocessing techniques like SMOTE, correlation analysis, and PCA.
We present a machine learning (ML) framework for the detection of wide binary star systems using Gaia DR3 data. By training supervised ML models on established wide binary catalogues, we efficiently classify wide binaries and employ clustering and nearest neighbour search to pair candidate systems. Our approach incorporates data preprocessing techniques such as SMOTE, correlation analysis, and PCA, and achieves high accuracy and recall in the task of wide binary classification. The resulting publicly available code enables rapid, scalable, and customizable analysis of wide binaries, complementing conventional analyses and providing a valuable resource for future astrophysical studies.
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