Refining Exoplanet Detection Using Supervised Learning and Feature Engineering

Mena, Francisco; IEEE

Abstract

The field of astronomical data analysis has experienced an important paradigm shift in the recent years. The automation of certain analysis procedures is no longer a desirable feature for reducing the human effort, but a must have asset for coping with the extremely large datasets that new instrumentation technologies are producing. In particular, the detection of transit planets - bodies that move across the face of another body - is an ideal setup for intelligent automation. Knowing if the variation within a light curve is evidence of a planet, requires applying advanced pattern recognition methods to a very large number of candidate stars. Here we present a supervised learning approach to refine the results produced by a case-by-case analysis of light-curves, harnessing the generalization power of machine learning techniques to predict the currently unclassified light-curves. The method uses feature engineering to find a suitable representation for classification, and different performance criteria to evaluate them and decide. Our results show that this automatic technique can help to speed up the very time-consuming manual process that is currently done by scientific experts.

Más información

Título según WOS: ID WOS:000502786400032 Not found in local WOS DB
Título de la Revista: 2018 XLIV LATIN AMERICAN COMPUTER CONFERENCE (CLEI 2018)
Editorial: IEEE
Fecha de publicación: 2018
Página de inicio: 278
Página final: 287
DOI:

10.1109/CLEI.2018.00041

Notas: ISI