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paper.bib
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@ARTICLE{2017AGU,
author = {{Camporeale}, E. and {Chandorkar}, M.},
title = "{Bayesian inference of radiation belt loss timescales.}",
journal = {AGU Fall Meeting Abstracts},
keywords = {1942 Machine learning, INFORMATICS, 1986 Statistical methods: Inferential, INFORMATICS, 2799 General or miscellaneous, MAGNETOSPHERIC PHYSICS, 7924 Forecasting, SPACE WEATHER},
year = 2017,
month = dec,
adsurl = {http://adsabs.harvard.edu/abs/2017AGUFMSM23A2583C},
adsnote = {Provided by the SAO/NASA Astrophysics Data System}
}
@ARTICLE{GPDst,
author={M. Chandorkar and E. Camporeale and S. Wing},
journal={Space Weather},
title={Probabilistic forecasting of the disturbance storm time index: An autoregressive Gaussian process approach},
year={2017},
volume={15},
number={8},
pages={1004-1019},
abstract={We present a methodology for generating probabilistic predictions for the Disturbance Storm Time (Dst) geomagnetic activity index. We focus on the One Step Ahead prediction task and use the OMNI hourly resolution data to build our models. Our proposed methodology is based on the technique of Gaussian Process Regression. Within this framework we develop two models; Gaussian Process Autoregressive (GP-AR) and Gaussian Process Autoregressive with eXogenous inputs (GP-ARX). We also propose a criterion to aid model selection with respect to the order of autoregressive inputs. Finally, we test the performance of the GP-AR and GP-ARX models on a set of 63 geomagnetic storms between 1998 and 2006 and illustrate sample predictions with error bars for some of these events.},
keywords={Autoregressive processes;Forecasting;Gaussian processes;Indexes;Mathematical model;Meteorology;Predictive models},
doi={10.1002/2017SW001627},
month={Aug}
}
@incollection{CHANDORKAR2018237,
title = "Chapter 9 - Probabilistic Forecasting of Geomagnetic Indices Using Gaussian Process Models",
editor = "Enrico Camporeale and Simon Wing and Jay R. Johnson",
booktitle = "Machine Learning Techniques for Space Weather",
publisher = "Elsevier",
pages = "237 - 258",
year = "2018",
isbn = "978-0-12-811788-0",
doi = "https://doi.org/10.1016/B978-0-12-811788-0.00009-3",
url = "http://www.sciencedirect.com/science/article/pii/B9780128117880000093",
author = "Mandar Chandorkar and Enrico Camporeale",
keywords = "Gaussian process, Space weather, Probabilistic forecasting, Geomagnetic indices",
abstract = "In this chapter, we give the reader an in-depth view into building of probabilistic forecasting models for geomagnetic time series using the Gaussian process methodology outlined in the previous chapters. We highlight design decisions and practical issues that must be addressed in order to use Gaussian process models for probabilistic prediction of a quantity of interest. As a pedagogical example, we formulate, train, and test a family of Gaussian process auto-regressive models for 1-h ahead prediction of the Dst geomagnetic index."
}
@misc{tensorflow2015-whitepaper,
title={ {TensorFlow}: Large-Scale Machine Learning on Heterogeneous Systems},
url={https://www.tensorflow.org/},
note={Software available from tensorflow.org},
author={
Mart\'{\i}n~Abadi and
Ashish~Agarwal and
Paul~Barham and
Eugene~Brevdo and
Zhifeng~Chen and
Craig~Citro and
Greg~S.~Corrado and
Andy~Davis and
Jeffrey~Dean and
Matthieu~Devin and
Sanjay~Ghemawat and
Ian~Goodfellow and
Andrew~Harp and
Geoffrey~Irving and
Michael~Isard and
Yangqing Jia and
Rafal~Jozefowicz and
Lukasz~Kaiser and
Manjunath~Kudlur and
Josh~Levenberg and
Dandelion~Man\'{e} and
Rajat~Monga and
Sherry~Moore and
Derek~Murray and
Chris~Olah and
Mike~Schuster and
Jonathon~Shlens and
Benoit~Steiner and
Ilya~Sutskever and
Kunal~Talwar and
Paul~Tucker and
Vincent~Vanhoucke and
Vijay~Vasudevan and
Fernanda~Vi\'{e}gas and
Oriol~Vinyals and
Pete~Warden and
Martin~Wattenberg and
Martin~Wicke and
Yuan~Yu and
Xiaoqiang~Zheng},
year={2015},
}
@Misc{tfscala,
author = {Emmanuel Antonios Platanios},
title = {{Tensorflow Scala}: Scala API for Tensorflow},
howpublished = {\url{http://platanios.org/tensorflow_scala/}},
year = {2017}
}
@Misc{renjin,
author = {BeDataDriven B.V.},
title = {{Renjin}: JVM-based interpreter for the R language for the statistical analysis.},
howpublished = {\url{http://www.renjin.org}}
}
@Misc{scala,
author = {Scala Center, École Polytechnique Fédérale Lausanne (EPFL).},
title = {{Scala}: The Scala Programming Language.},
howpublished = {\url{https://www.scala-lang.org}},
year = {2002}
}