TL;DR
Astronomaly is a flexible, personalized active anomaly detection framework for astronomical data that effectively identifies rare phenomena by combining machine learning with expert input, demonstrated on real and simulated datasets.
Contribution
Introduces Astronomaly, a novel active learning-based anomaly detection system tailored for diverse astronomical data types, enhancing the discovery of interesting anomalies.
Findings
Doubles the number of interesting anomalies found in initial user interactions
Effective on multiple data types including images, light curves, spectra
Easily extendable with new algorithms and techniques
Abstract
Survey telescopes such as the Vera C. Rubin Observatory and the Square Kilometre Array will discover billions of static and dynamic astronomical sources. Properly mined, these enormous datasets will likely be wellsprings of rare or unknown astrophysical phenomena. The challenge is that the datasets are so large that most data will never be seen by human eyes; currently the most robust instrument we have to detect relevant anomalies. Machine learning is a useful tool for anomaly detection in this regime. However, it struggles to distinguish between interesting anomalies and irrelevant data such as instrumental artefacts or rare astronomical sources that are simply not of interest to a particular scientist. Active learning combines the flexibility and intuition of the human brain with the raw processing power of machine learning. By strategically choosing specific objects for expert…
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