TL;DR
This paper introduces a real-time streaming classification model for variable stars that updates incrementally with new observations, enabling faster and more efficient classification suitable for upcoming large-scale surveys.
Contribution
The work presents a novel streaming probabilistic classification model with incremental features, allowing real-time updates without re-training from scratch.
Findings
Achieves high classification accuracy
Operates an order of magnitude faster than traditional methods
Successfully tested on multiple star catalogs
Abstract
In the last years, automatic classification of variable stars has received substantial attention. Using machine learning techniques for this task has proven to be quite useful. Typically, machine learning classifiers used for this task require to have a fixed training set, and the training process is performed offline. Upcoming surveys such as the Large Synoptic Survey Telescope (LSST) will generate new observations daily, where an automatic classification system able to create alerts online will be mandatory. A system with those characteristics must be able to update itself incrementally. Unfortunately, after training, most machine learning classifiers do not support the inclusion of new observations in light curves, they need to re-train from scratch. Naively re-training from scratch is not an option in streaming settings, mainly because of the expensive pre-processing routines…
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