Artículo de publicación ISIWe present a new method to discriminate periodic from nonperiodic irregularly sampled light curves. We introduce a periodic kernel and maximize a similarity measure derived from information theory to estimate the periods and a discriminator factor. We tested the method on a data set containing 100,000 synthetic periodic and nonperiodic light curves with various periods, amplitudes, and shapes generated using a multivariate generative model. We correctly identified periodic and nonperiodic light curves with a completeness of similar to 90% and a precision of similar to 95%, for light curves with a signal-to-noise ratio (S/N) larger than 0.5. We characterize the efficiency and reliability of the model using these sy...
One of the main features of interest in analysing the light curves of stars is the underlying period...
This paper presents a new period-finding method based on conditional entropy that is both efficient ...
Doctor en Ingeniería EléctricaThe analysis of time-variable astronomical phenomena is of great inter...
Artículo de publicación ISIWe present a new method to discriminate periodic from nonperiodic irregul...
International audienceWe present a new method to discriminate periodic from nonperiodic irregularly ...
Abstract—We propose a new information theoretic metric for finding periodicities in stellar light cu...
Many astronomical phenomena exhibit patterns that have periodic behavior. An important step when ana...
We implement two hidden-layer feedforward networks to classify 3011 variable star light curves. Thes...
We present a machine learning package for the classification of periodic variable stars. Our package...
The EPOCH (EROS-2 periodic variable star classification using machine learning) project ai...
International audienceThe EPOCH (EROS-2 periodic variable star classification using machine learning...
The EPOCH (EROS-2 periodic variable star classification using machine learning) project aims to dete...
An important task in astroparticle physics is the detection of periodicities in irregularly sampled ...
An important task in astroparticle physics is the detection of periodicities in irregularly sampled ...
Artículos de publicación ISIIn this letter, we propose a method for period estimation in light curve...
One of the main features of interest in analysing the light curves of stars is the underlying period...
This paper presents a new period-finding method based on conditional entropy that is both efficient ...
Doctor en Ingeniería EléctricaThe analysis of time-variable astronomical phenomena is of great inter...
Artículo de publicación ISIWe present a new method to discriminate periodic from nonperiodic irregul...
International audienceWe present a new method to discriminate periodic from nonperiodic irregularly ...
Abstract—We propose a new information theoretic metric for finding periodicities in stellar light cu...
Many astronomical phenomena exhibit patterns that have periodic behavior. An important step when ana...
We implement two hidden-layer feedforward networks to classify 3011 variable star light curves. Thes...
We present a machine learning package for the classification of periodic variable stars. Our package...
The EPOCH (EROS-2 periodic variable star classification using machine learning) project ai...
International audienceThe EPOCH (EROS-2 periodic variable star classification using machine learning...
The EPOCH (EROS-2 periodic variable star classification using machine learning) project aims to dete...
An important task in astroparticle physics is the detection of periodicities in irregularly sampled ...
An important task in astroparticle physics is the detection of periodicities in irregularly sampled ...
Artículos de publicación ISIIn this letter, we propose a method for period estimation in light curve...
One of the main features of interest in analysing the light curves of stars is the underlying period...
This paper presents a new period-finding method based on conditional entropy that is both efficient ...
Doctor en Ingeniería EléctricaThe analysis of time-variable astronomical phenomena is of great inter...