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On cheap entropy-sparsified regression learning.
Horenko, Illia; Vecchi, Edoardo; Kardos, Juraj; Wächter, Andreas; Schenk, Olaf; O'Kane, Terence J; Gagliardini, Patrick; Gerber, Susanne.
Afiliación
  • Horenko I; Chair for Mathematics of AI, Faculty of Mathematics, Technical University of Kaiserslautern, Kaiserslautern 67663, Germany.
  • Vecchi E; Institute of Computing, Faculty of Informatics, Università della Svizzera italiana (USI), TI-6962, Viganello, Switzerland.
  • Kardos J; Institute of Computing, Faculty of Informatics, Università della Svizzera italiana (USI), TI-6962, Viganello, Switzerland.
  • Wächter A; McCormick School of Engineering and Applied Science, Northwestern University, Evanston, IL 60201.
  • Schenk O; Institute of Computing, Faculty of Informatics, Università della Svizzera italiana (USI), TI-6962, Viganello, Switzerland.
  • O'Kane TJ; Climate Science Centre, Commonwealth Scientific and Industrial Research Organisation (CSIRO) Oceans and Atmosphere, Hobart, TAS 7001, Australia.
  • Gagliardini P; Institute of Finance, Faculty of Economics, Università della Svizzera italiana (USI), TI-6900, Lugano, Switzerland.
  • Gerber S; Institute of Human Genetics, University Medical Center Johannes Gutenberg-Universität (JGU) Mainz, Anselm-Franz-von-Bentzel-Weg 3 55128, Mainz, Germany.
Proc Natl Acad Sci U S A ; 120(1): e2214972120, 2023 01 03.
Article en En | MEDLINE | ID: mdl-36580592
Regression learning is one of the long-standing problems in statistics, machine learning, and deep learning (DL). We show that writing this problem as a probabilistic expectation over (unknown) feature probabilities - thus increasing the number of unknown parameters and seemingly making the problem more complex-actually leads to its simplification, and allows incorporating the physical principle of entropy maximization. It helps decompose a very general setting of this learning problem (including discretization, feature selection, and learning multiple piece-wise linear regressions) into an iterative sequence of simple substeps, which are either analytically solvable or cheaply computable through an efficient second-order numerical solver with a sublinear cost scaling. This leads to the computationally cheap and robust non-DL second-order Sparse Probabilistic Approximation for Regression Task Analysis (SPARTAn) algorithm, that can be efficiently applied to problems with millions of feature dimensions on a commodity laptop, when the state-of-the-art learning tools would require supercomputers. SPARTAn is compared to a range of commonly used regression learning tools on synthetic problems and on the prediction of the El Niño Southern Oscillation, the dominant interannual mode of tropical climate variability. The obtained SPARTAn learners provide more predictive, sparse, and physically explainable data descriptions, clearly discerning the important role of ocean temperature variability at the thermocline in the equatorial Pacific. SPARTAn provides an easily interpretable description of the timescales by which these thermocline temperature features evolve and eventually express at the surface, thereby enabling enhanced predictability of the key drivers of the interannual climate.
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Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Clima Tropical / El Niño Oscilación del Sur Idioma: En Revista: Proc Natl Acad Sci U S A Año: 2023 Tipo del documento: Article País de afiliación: Alemania

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Clima Tropical / El Niño Oscilación del Sur Idioma: En Revista: Proc Natl Acad Sci U S A Año: 2023 Tipo del documento: Article País de afiliación: Alemania