Automatic Catalog of RRLyrae from ∼ 14 million VVV Light Curves: How far can we go with traditional machine-learning?

05/01/2020
by   Juan B. Cabral, et al.
15

The creation of a 3D map of the bulge using RRLyrae (RRL) is one of the main goals of the VVV(X) surveys. The overwhelming number of sources under analysis request the use of automatic procedures. In this context, previous works introduced the use of Machine Learning (ML) methods for the variable star classification. Our goal is the development and analysis of an automatic procedure, based on ML, for the identification of RRLs in the VVV Survey. This procedure will be use to generate reliable catalogs integrated over several tiles in the survey. After the reconstruction of light-curves, we extract a set of period and intensity-based features. We use for the first time a new subset of pseudo color features. We discuss all the appropriate steps needed to define our automatic pipeline: selection of quality measures; sampling procedures; classifier setup and model selection. As final result, we construct an ensemble classifier with an average Recall of 0.48 and average Precision of 0.86 over 15 tiles. We also make available our processed datasets and a catalog of candidate RRLs. Perhaps most interestingly, from a classification perspective based on photometric broad-band data, is that our results indicate that Color is an informative feature type of the RRL that should be considered for automatic classification methods via ML. We also argue that Recall and Precision in both tables and curves are high quality metrics for this highly imbalanced problem. Furthermore, we show for our VVV data-set that to have good estimates it is important to use the original distribution more than reduced samples with an artificial balance. Finally, we show that the use of ensemble classifiers helps resolve the crucial model selection step, and that most errors in the identification of RRLs are related to low quality observations of some sources or to the difficulty to resolve the RRL-C type given the date.

READ FULL TEXT

page 5

page 7

page 8

page 11

page 12

research
08/16/2023

Precision and Recall Reject Curves for Classification

For some classification scenarios, it is desirable to use only those cla...
research
05/04/2021

Drifting Features: Detection and evaluation in the context of automatic RRLs identification in VVV

As most of the modern astronomical sky surveys produce data faster than ...
research
12/04/2019

Streaming Classification of Variable Stars

In the last years, automatic classification of variable stars has receiv...
research
08/23/2022

Building Robust Machine Learning Models for Small Chemical Science Data: The Case of Shear Viscosity

Shear viscosity, though being a fundamental property of all liquids, is ...
research
12/16/2020

StarcNet: Machine Learning for Star Cluster Identification

We present a machine learning (ML) pipeline to identify star clusters in...
research
02/27/2020

Imbalance Learning for Variable Star Classification

The accurate automated classification of variable stars into their respe...
research
11/17/2015

Sacrificing information for the greater good: how to select photometric bands for optimal accuracy

Large-scale surveys make huge amounts of photometric data available. Bec...

Please sign up or login with your details

Forgot password? Click here to reset