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Karim Pichara

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Distinguishing a planetary transit from false positives: a Transformer-based classification for planetary transit signals

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Apr 27, 2023
Helem Salinas, Karim Pichara, Rafael Brahm, Francisco Pérez-Galarce, Domingo Mery

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Informative regularization for a multi-layer perceptron RR Lyrae classifier under data shift

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Mar 12, 2023
Francisco Pérez-Galarce, Karim Pichara, Pablo Huijse, Márcio Catelan, Domingo Mery

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Error-Aware B-PINNs: Improving Uncertainty Quantification in Bayesian Physics-Informed Neural Networks

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Dec 14, 2022
Olga Graf, Pablo Flores, Pavlos Protopapas, Karim Pichara

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Uncertainty Quantification in Neural Differential Equations

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Nov 08, 2021
Olga Graf, Pablo Flores, Pavlos Protopapas, Karim Pichara

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Classifying CMB time-ordered data through deep neural networks

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Apr 13, 2020
Felipe Rojas, Loïc Maurin, Rolando Dünner, Karim Pichara

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Scalable End-to-end Recurrent Neural Network for Variable star classification

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Feb 03, 2020
Ignacio Becker, Karim Pichara, Márcio Catelan, Pavlos Protopapas, Carlos Aguirre, Fatemeh Nikzat

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Streaming Classification of Variable Stars

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Dec 04, 2019
Lukas Zorich, Karim Pichara, Pavlos Protopapas

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An Information Theory Approach on Deciding Spectroscopic Follow Ups

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Nov 06, 2019
Javiera Astudillo, Pavlos Protopapas, Karim Pichara, Pablo Huijse

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An Algorithm for the Visualization of Relevant Patterns in Astronomical Light Curves

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Mar 08, 2019
Christian Pieringer, Karim Pichara, Márcio Catelán, Pavlos Protopapas

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A Full Probabilistic Model for Yes/No Type Crowdsourcing in Multi-Class Classification

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Jan 02, 2019
Belen Saldias-Fuentes, Pavlos Protopapas, Karim Pichara

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