IATE   20350
INSTITUTO DE ASTRONOMIA TEORICA Y EXPERIMENTAL
Unidad Ejecutora - UE
artículos
Título:
From FATS to feets: A Journey to make a great astronomy feature extraction tool for machine-learning better.
Autor/es:
RAMOS, FELIPE; VANDERPLAS, JAKE; CABRAL, JUAN; GUROVICH, S.; SÁNCHEZ, BRUNO; GRANITTO, P.
Revista:
Astronomy and Computing
Editorial:
Elsevier
Referencias:
Lugar: Amsterdam; Año: 2018 vol. 25 p. 213 - 220
ISSN:
2213-1337
Resumen:
Machine learning algorithms are highly useful for the classification of time series data in astronomy in this era of peta-scale public survey data releases. These methods can facilitate the discovery of new unknown events in most astrophysical areas, as well as improving the analysis of samples of known phenomena. Machine learning algorithms use features extracted from collected data as input predictive variables. A public tool called Feature Analysis for Time Series (FATS) has proved an excellent workhorse for feature extraction, particularly light curve classification for variable objects. In this study, we present a major improvement to FATS, which corrects inconvenient design choices, minor details, and documentation for the re-engineering process. This improvement comprises a new Python package called extit{feets}, which is important for future code-refactoring for astronomical software tools.