0000000000403131

AUTHOR

J. Emmanuel Johnson

showing 5 related works from this author

RotNet: Fast and Scalable Estimation of Stellar Rotation Periods Using Convolutional Neural Networks

2020

Magnetic activity in stars manifests as dark spots on their surfaces that modulate the brightness observed by telescopes. These light curves contain important information on stellar rotation. However, the accurate estimation of rotation periods is computationally expensive due to scarce ground truth information, noisy data, and large parameter spaces that lead to degenerate solutions. We harness the power of deep learning and successfully apply Convolutional Neural Networks to regress stellar rotation periods from Kepler light curves. Geometry-preserving time-series to image transformations of the light curves serve as inputs to a ResNet-18 based architecture which is trained through transf…

FOS: Computer and information sciencesComputer Science - Machine LearningAstrophysics - Solar and Stellar AstrophysicsFOS: Physical sciencesSolar and Stellar Astrophysics (astro-ph.SR)Machine Learning (cs.LG)
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Kernel methods and their derivatives: Concept and perspectives for the earth system sciences.

2020

Kernel methods are powerful machine learning techniques which implement generic non-linear functions to solve complex tasks in a simple way. They Have a solid mathematical background and exhibit excellent performance in practice. However, kernel machines are still considered black-box models as the feature mapping is not directly accessible and difficult to interpret.The aim of this work is to show that it is indeed possible to interpret the functions learned by various kernel methods is intuitive despite their complexity. Specifically, we show that derivatives of these functions have a simple mathematical formulation, are easy to compute, and can be applied to many different problems. We n…

FOS: Computer and information sciencesComputer Science - Machine LearningSupport Vector MachineTheoretical computer scienceComputer scienceEntropyKernel FunctionsNormal Distribution0211 other engineering and technologies02 engineering and technologyMachine Learning (cs.LG)Machine LearningStatistics - Machine LearningSimple (abstract algebra)0202 electrical engineering electronic engineering information engineeringOperator TheoryData ManagementMultidisciplinaryGeographyApplied MathematicsSimulation and ModelingQRDensity estimationKernel methodKernel (statistics)Physical SciencessymbolsMedicine020201 artificial intelligence & image processingAlgorithmsResearch ArticleComputer and Information SciencesScienceMachine Learning (stat.ML)Research and Analysis MethodsKernel MethodsKernel (linear algebra)symbols.namesakeArtificial IntelligenceSupport Vector MachinesHumansEntropy (information theory)Computer SimulationGaussian process021101 geological & geomatics engineeringData VisualizationCorrectionRandom VariablesFunction (mathematics)Probability TheorySupport vector machineAlgebraPhysical GeographyLinear AlgebraEarth SciencesEigenvectorsRandom variableMathematicsEarth SystemsPLoS ONE
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Gaussianizing the Earth: Multidimensional Information Measures for Earth Data Analysis

2021

Information theory is an excellent framework for analyzing Earth system data because it allows us to characterize uncertainty and redundancy, and is universally interpretable. However, accurately estimating information content is challenging because spatio-temporal data is high-dimensional, heterogeneous and has non-linear characteristics. In this paper, we apply multivariate Gaussianization for probability density estimation which is robust to dimensionality, comes with statistical guarantees, and is easy to apply. In addition, this methodology allows us to estimate information-theoretic measures to characterize multivariate densities: information, entropy, total correlation, and mutual in…

FOS: Computer and information sciencesMultivariate statisticsGeneral Computer ScienceComputer scienceMachine Learning (stat.ML)Mutual informationInformation theorycomputer.software_genreStatistics - ApplicationsEarth system scienceRedundancy (information theory)13. Climate actionStatistics - Machine LearningGeneral Earth and Planetary SciencesEntropy (information theory)Applications (stat.AP)Total correlationData miningElectrical and Electronic EngineeringInstrumentationcomputerCurse of dimensionality
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Information Theory in Density Destructors

2020

Density destructors are differentiable and invertible transforms that map multivariate PDFs of arbitrary structure (low entropy) into non-structured PDFs (maximum entropy). Multivariate Gaussianization and multivariate equalization are specific examples of this family, which break down the complexity of the original PDF through a set of elementary transforms that progressively remove the structure of the data. We demonstrate how this property of density destructive flows is connected to classical information theory, and how density destructors can be used to get more accurate estimates of information theoretic quantities. Experiments with total correlation and mutual information inmultivari…

FOS: Computer and information sciencesComputer Science - Machine LearningStatistics - Machine LearningMachine Learning (stat.ML)Machine Learning (cs.LG)
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Information Theory Measures via Multidimensional Gaussianization

2020

Information theory is an outstanding framework to measure uncertainty, dependence and relevance in data and systems. It has several desirable properties for real world applications: it naturally deals with multivariate data, it can handle heterogeneous data types, and the measures can be interpreted in physical units. However, it has not been adopted by a wider audience because obtaining information from multidimensional data is a challenging problem due to the curse of dimensionality. Here we propose an indirect way of computing information based on a multivariate Gaussianization transform. Our proposal mitigates the difficulty of multivariate density estimation by reducing it to a composi…

FOS: Computer and information sciencesComputer Science - Machine LearningStatistics - Machine LearningMachine Learning (stat.ML)Machine Learning (cs.LG)
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