Photometric Data-driven Classification of Type Ia Supernovae in the Open Supernova Catalog

06/18/2020
by   Stanislav Dobryakov, et al.
0

We propose a novel approach for a machine-learning-based detection of the type Ia supernovae using photometric information. Unlike other approaches, only real observation data is used during training. Despite being trained on a relatively small sample, the method shows good results on real data from the Open Supernovae Catalog. We also demonstrate that the quality of a model, trained on PLASTiCC simulated sample, significantly decreases evaluated on real objects.

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