Data Mining and Machine-Learning in Time-Domain Discovery & Classification
Joshua S. Bloom, Joseph W. Richards

TL;DR
This paper discusses how data mining and machine learning are transforming the discovery and classification of astronomical phenomena in the time domain, addressing challenges posed by large, complex datasets.
Contribution
It introduces the unique challenges and solutions for applying machine learning to time-domain astronomy data, emphasizing the evolving scientific process.
Findings
Machine learning enables efficient classification of variable stars and transient events.
Automation accelerates discovery and analysis in large astronomical datasets.
Time-domain data presents specific challenges for data mining techniques.
Abstract
The changing heavens have played a central role in the scientific effort of astronomers for centuries. Galileo's synoptic observations of the moons of Jupiter and the phases of Venus starting in 1610, provided strong refutation of Ptolemaic cosmology. In more modern times, the discovery of a relationship between period and luminosity in some pulsational variable stars led to the inference of the size of the Milky Way, the distance scale to the nearest galaxies, and the expansion of the Universe. Distant explosions of supernovae were used to uncover the existence of dark energy and provide a precise numerical account of dark matter. Indeed, time-domain observations of transient events and variable stars, as a technique, influences a broad diversity of pursuits in the entire astronomy endeavor. While, at a fundamental level, the nature of the scientific pursuit remains unchanged, the…
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Taxonomy
TopicsTime Series Analysis and Forecasting
