IMMLApr 1, 2013

An improved quasar detection method in EROS-2 and MACHO LMC datasets

arXiv:1304.0401v136 citations
Originality Incremental advance
AI Analysis

This improves state-of-the-art quasar detection for astronomy researchers, but is incremental as it builds on existing methods.

The paper tackles quasar detection in EROS-2 and MACHO LMC datasets by developing a boosted Random Forest classifier with variability features, achieving about 90% precision and 86% recall, and identifying 1160 and 2551 candidates respectively.

We present a new classification method for quasar identification in the EROS-2 and MACHO datasets based on a boosted version of Random Forest classifier. We use a set of variability features including parameters of a continuous auto regressive model. We prove that continuous auto regressive parameters are very important discriminators in the classification process. We create two training sets (one for EROS-2 and one for MACHO datasets) using known quasars found in the LMC. Our model's accuracy in both EROS-2 and MACHO training sets is about 90% precision and 86% recall, improving the state of the art models accuracy in quasar detection. We apply the model on the complete, including 28 million objects, EROS-2 and MACHO LMC datasets, finding 1160 and 2551 candidates respectively. To further validate our list of candidates, we crossmatched our list with a previous 663 known strong candidates, getting 74% of matches for MACHO and 40% in EROS-2. The main difference on matching level is because EROS-2 is a slightly shallower survey which translates to significantly lower signal-to-noise ratio lightcurves.

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