Machine Learning Detects Gravitational Lenses to Unveil Dark Matter and Energy

On April 4, 2025, a collaborative study titled Gaia GraL: Gaia gravitational lens systems IX. Using XGBoost to explore the Gaia Focused Product Release GravLens catalogue was published, detailing an innovative machine learning approach to identify quasar strong gravitational lenses in large astrometric surveys with remarkable accuracy.

The study introduces a machine learning algorithm based on eXtreme Gradient Boosting to identify quasar gravitational lenses in large astrometric surveys. Trained using realistic simulations from the EAGLE project, the method achieved high accuracy with true positive and negative rates of 99.99% and 99.84%, respectively. Applied to Gaia’s catalogue, it identified 1127 candidates, including 201 strong contenders, demonstrating its effectiveness in detecting multiply imaged quasars for cosmological studies.

The Role of Machine Learning in Astronomy

Machine learning has become an indispensable tool in modern astronomy, enabling researchers to sift through vast amounts of data with precision and speed. In this case, scientists employed a sophisticated selection pipeline to analyze data from the Gaia mission, a space observatory that maps the Milky Way in unprecedented detail. By training algorithms on known gravitational lens candidates, they developed two key metrics: Pbasic and Pdist, which measure the likelihood of an object being a gravitational lens based on its brightness variability and distance, respectively.

The researchers focused their search on objects with a galactic latitude |b| > 15°, ensuring that their candidates were far enough from the plane of the Milky Way to avoid confusion with other astrophysical phenomena. This criterion, combined with the requirement that both Pbasic and Pdist scores exceed 0.8, narrowed down the field to a list of up-and-coming gravitational lens candidates.

Implications for Astronomy

The discovery of these gravitational lens candidates has profound implications for our understanding of the universe. By providing a new set of cosmic telescopes, they enable astronomers to study distant galaxies and quasars with greater precision, shedding light on everything from dark matter distribution to the evolution of the cosmos.

Moreover, this work demonstrates the power of machine learning in modern astronomy. As datasets grow in size and complexity, such tools will become increasingly essential for unlocking the universe’s secrets.

A New Era of Cosmic Exploration

The identification of these gravitational lens candidates marks a significant milestone in astronomy. By combining the precision of machine learning with the vast dataset provided by Gaia, researchers have opened a new chapter in our exploration of the cosmos. As we continue to refine our tools and techniques, the possibilities for discovery are truly limitless.

👉 More information
🗞 Gaia GraL: Gaia gravitational lens systems IX. Using XGBoost to explore the Gaia Focused Product Release GravLens catalogue
🧠 DOI: https://doi.org/10.48550/arXiv.2504.03303

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