Symbolic regression
This page was last updated on 2025-11-24 06:12:58 UTC
Manually curated articles on Symbolic regression
| Abstract | Title | Authors | Publication Date | Journal/ Conference | Citation count | Highest h-index | View recommendations |
|---|---|---|---|---|---|---|---|
| visibility_off | Discovering governing equations from data by sparse identification of nonlinear dynamical systems | S. Brunton, J. Proctor, J. Kutz | 2015-09-11 | Proceedings of the National Academy of Sciences of the United States of America, Proceedings of the National Academy of Sciences | 4332 | 76 | open_in_new |
| visibility_off | Robust learning from noisy, incomplete, high-dimensional experimental data via physically constrained symbolic regression | Patrick A. K. Reinbold, Logan Kageorge, M. Schatz, R. Grigoriev | 2021-02-24 | Nature Communications | 123 | 25 | open_in_new |
| visibility_off | Data-driven discovery of coordinates and governing equations | Kathleen P. Champion, Bethany Lusch, J. Kutz, S. Brunton | 2019-03-29 | Proceedings of the National Academy of Sciences of the United States of America | 841 | 76 | open_in_new |
| visibility_off | Chaos as an intermittently forced linear system | S. Brunton, Bingni W. Brunton, J. Proctor, E. Kaiser, J. Kutz | 2016-08-18 | Nature Communications | 572 | 76 | open_in_new |
| visibility_off | Sparse identification of nonlinear dynamics for model predictive control in the low-data limit | E. Kaiser, J. Kutz, S. Brunton | 2017-11-15 | Proceedings of the Royal Society A, Proceedings. Mathematical, Physical, and Engineering Sciences | 578 | 76 | open_in_new |
| visibility_off | Inferring Biological Networks by Sparse Identification of Nonlinear Dynamics | N. Mangan, S. Brunton, J. Proctor, J. Kutz | 2016-05-26 | IEEE Transactions on Molecular, Biological and Multi-Scale Communications, IEEE Transactions on Molecular Biological and Multi-Scale Communications | 389 | 76 | open_in_new |
| visibility_off | SINDy-PI: a robust algorithm for parallel implicit sparse identification of nonlinear dynamics | Kadierdan Kaheman, J. Kutz, S. Brunton | 2020-04-05 | Proceedings of the Royal Society A, Proceedings. Mathematical, Physical, and Engineering Sciences | 305 | 76 | open_in_new |
| visibility_off | Multidimensional Approximation of Nonlinear Dynamical Systems | Patrick Gelß, Stefan Klus, J. Eisert, Christof Schutte | 2018-09-07 | Journal of Computational and Nonlinear Dynamics | 76 | 25 | open_in_new |
| visibility_off | Learning Discrepancy Models From Experimental Data | Kadierdan Kaheman, E. Kaiser, B. Strom, J. Kutz, S. Brunton | 2019-09-18 | arXiv.org, ArXiv | 48 | 76 | open_in_new |
| visibility_off | Discovery of Physics From Data: Universal Laws and Discrepancies | Brian M. de Silva, D. Higdon, S. Brunton, J. Kutz | 2019-06-19 | Frontiers in Artificial Intelligence | 92 | 76 | open_in_new |
| visibility_off | Data-driven discovery of partial differential equations | S. Rudy, S. Brunton, J. Proctor, J. Kutz | 2016-09-21 | Science Advances | 1493 | 76 | open_in_new |
| visibility_off | Ensemble-SINDy: Robust sparse model discovery in the low-data, high-noise limit, with active learning and control | Urban Fasel, J. Kutz, Bingni W. Brunton, S. Brunton | 2021-11-22 | Proceedings of the Royal Society A, Proceedings. Mathematical, Physical, and Engineering Sciences | 278 | 76 | open_in_new |
| visibility_off | Learning sparse nonlinear dynamics via mixed-integer optimization | D. Bertsimas, Wes Gurnee | 2022-06-01 | Nonlinear Dynamics | 55 | 97 | open_in_new |
| visibility_off | A Unified Framework for Sparse Relaxed Regularized Regression: SR3 | P. Zheng, T. Askham, S. Brunton, J. Kutz, A. Aravkin | 2018-07-14 | IEEE Access | 155 | 76 | open_in_new |
| Abstract | Title | Authors | Publication Date | Journal/ Conference | Citation count | Highest h-index | View recommendations |
Recommended articles on Symbolic regression
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| visibility_off | Rediscovering shallow water equations from experimental data | Kjell S. Heinrich, Douglas S. Seth, Mats Ehrnstrom, S. Ellingsen | 2025-11-07 | ArXiv | 0 | 18 |
| visibility_off | CODE: A global approach to ODE dynamics learning | Nils Wildt, D. Tartakovsky, S. Oladyshkin, Wolfgang Nowak | 2025-11-19 | ArXiv | 0 | 49 |
| visibility_off | Self-induced stochastic resonance: A physics-informed machine learning approach | Divyesh Savaliya, Marius E. Yamakou | 2025-10-26 | ArXiv | 0 | 10 |
| visibility_off | Globalizing the Carleman linear embedding method for nonlinear dynamics | I. Novikau, Ilon Joseph | 2025-10-17 | ArXiv | 0 | 3 |
| visibility_off | Towards Interpretable Deep Learning and Analysis of Dynamical Systems via the Discrete Empirical Interpolation Method | Hojin Kim, R. Maulik | 2025-10-22 | ArXiv | 0 | 27 |
| visibility_off | Data-Driven System Identification of High-Speed Craft Dynamics Uncovering Governing Equations with Machine Learning | Subodh Chander, Stefano Brizzolara | 2025-10-17 | SNAME International Conference on Fast Sea Technology | 0 | 0 |
| visibility_off | Physics-Informed Neural Network Frameworks for the Analysis of Engineering and Biological Dynamical Systems Governed by Ordinary Differential Equations | Tyrus Whitman, Andrew Particka, Christopher Diers, Ian Griffin, Charuka D. Wickramasinghe, Pradeep K. Ranaweera | 2025-10-28 | ArXiv | 0 | 2 |
| visibility_off | An Introductory Guide to Koopman Learning | Matthew J. Colbrook, Z. Drmač, Andrew Horning | 2025-10-24 | ArXiv | 0 | 21 |
| visibility_off | Integrating Score-Based Generative Modeling and Neural ODEs for Accurate Representation of Multiscale Chaotic Dynamics | Giulio Del Felice, L. T. Giorgini | 2025-11-05 | ArXiv | 0 | 8 |
| visibility_off | Uncertainties in Physics-informed Inverse Problems: The Hidden Risk in Scientific AI | Yoh-ichi Mototake, Makoto Sasaki | 2025-11-06 | ArXiv | 0 | 8 |
| visibility_off | Noise estimation of SDE from a single data trajectory | Munawar Ali, Purba Das, Qi Feng, L. Gao, Guang Lin | 2025-09-29 | ArXiv | 0 | 1 |
| visibility_off | Equation-Free Coarse Control of Distributed Parameter Systems via Local Neural Operators | Gianluca Fabiani, Constantinos I. Siettos, Ioannis G. Kevrekidis | 2025-09-28 | ArXiv | 0 | 9 |
| visibility_off | Non-intrusive structural-preserving sequential data assimilation | Lizuo Liu, Tongtong Li, Anne Gelb | 2025-10-22 | ArXiv | 0 | 2 |
| visibility_off | Data-Driven Reduced Modeling of Recurrent Neural Networks | Alice Marraffa, Renate Krause, Valerio Mante, George Haller | 2025-10-14 | bioRxiv | 0 | 0 |
| visibility_off | Integral Bayesian symbolic regression for optimal discovery of governing equations from scarce and noisy data | Oriol Cabanas-Tirapu, Sergio Cobo-López, Savannah E. Sanchez, Forest L. Rohwer, M. Sales-Pardo, R. Guimerà | 2025-11-18 | ArXiv | 0 | 36 |
| visibility_off | Spectrum and Physics-Informed Neural Networks (SaPINNs) for Input-State-Parameter Estimation in Dynamic Systems Subjected to Natural Hazards-Induced Excitation | Antonina M. Kosikova, Apostolos F. Psaros, Andrew Smyth | 2025-11-10 | ArXiv | 0 | 13 |
| visibility_off | Leveraging Scale Separation and Stochastic Closure for Data-Driven Prediction of Chaotic Dynamics | Ismaël Zighed, Nicolas Thome, Patrick Gallinari, T. Sayadi | 2025-10-28 | ArXiv | 0 | 13 |
| visibility_off | Stoichiometrically-informed symbolic regression for extracting chemical reaction mechanisms from data | Manuel Palma Banos, J. Kress, R. Hernandez, G. Craven | 2025-10-23 | ArXiv | 0 | 42 |
| visibility_off | Reparameterizing 4DVAR with neural fields | Jaemin Oh | 2025-09-26 | ArXiv | 0 | 0 |
| visibility_off | When is a System Discoverable from Data? Discovery Requires Chaos | Zakhar Shumaylov, Peter Zaika, Philipp Scholl, Gitta Kutyniok, L. Horesh, C. Schonlieb | 2025-11-12 | ArXiv | 0 | 55 |
| visibility_off | Latent Mixture of Symmetries for Sample-Efficient Dynamic Learning | Haoran Li, Chenhan Xiao, Muhao Guo, Yang Weng | 2025-10-04 | ArXiv | 0 | 10 |
| visibility_off | InputDSA: Demixing then Comparing Recurrent and Externally Driven Dynamics | Ann Huang, Mitchell Ostrow, Satpreet H. Singh, L. Kozachkov, I. Fiete, Kanaka Rajan | 2025-10-29 | ArXiv | 1 | 34 |
| visibility_off | From Observations to Parameters: Detecting Changepoint in Nonlinear Dynamics with Simulation-based Inference | Xiangbo Deng, Cheng Chen, Peng Yang | 2025-10-20 | ArXiv | 0 | 1 |
| visibility_off | Data selection: at the interface of PDE-based inverse problem and randomized linear algebra | Kathrin Hellmuth, Ruhui Jin, Qin Li, Stephen J. Wright | 2025-10-02 | ArXiv | 0 | 2 |
| visibility_off | A novel reservoir computing for inferring hyperchaotic systems from partial observation | Yuting Li, Yong Li | 2025-09-30 | Nonlinear Dynamics | 0 | 1 |
| visibility_off | On-line learning of dynamic systems: sparse regression meets Kalman filtering | G. Pillonetto, Akram Yazdani, A. Aravkin | 2025-11-14 | ArXiv | 0 | 59 |
| visibility_off | Universal differential equations as a unifying modeling language for neuroscience | A. El‐Gazzar, M. Gerven | 2025-10-30 | Frontiers in Computational Neuroscience | 0 | 39 |
| visibility_off | Lax-Pair-FIND: Discovering Lax pair from scarce data via deep learning. | Shuning Lin, Yong Chen | 2025-11-01 | Chaos | 0 | 6 |
| visibility_off | Weak Form Learning for Mean-Field Partial Differential Equations: an Application to Insect Movement | Seth Minor, B. Elderd, Benjamin Van Allen, David M. Bortz, Vanja Dukic | 2025-10-09 | ArXiv | 0 | 22 |
| visibility_off | A novel approach to quantify out-of-distribution uncertainty in Neural and Universal Differential Equations | Stefano Giampiccolo, Giovanni Iacca, Luca Marchetti | 2025-10-03 | bioRxiv | 0 | 5 |
| visibility_off | Learning Biomolecular Motion: The Physics-Informed Machine Learning Paradigm | Aaryesh Deshpande | 2025-11-10 | ArXiv | 0 | 0 |
| visibility_off | Towards Fast Coarse-graining and Equation Discovery with Foundation Inference Models | Manuel Hinz, Maximilian Mauel, Patrick Seifner, David Berghaus, K. Cvejoski, Ramsés J. Sánchez | 2025-10-14 | ArXiv | 1 | 8 |
| visibility_off | Learning to Predict Chaos: Curriculum-Driven Training for Robust Forecasting of Chaotic Dynamics | Harshil Vejendla | 2025-10-05 | ArXiv | 0 | 1 |
| visibility_off | Control of dynamical systems with neural networks | Lucas Böttcher | 2025-10-06 | ArXiv | 0 | 2 |
| visibility_off | Machine Learning of Nonlinear Waves: Data-Driven Methods for Computer-Assisted Discovery of Equations, Symmetries, Conservation Laws, and Integrability | J. Adriazola, Panayotis Kevrekidis, V. Koukouloyannis, Wei Zhu | 2025-10-16 | ArXiv | 0 | 12 |
| Abstract | Title | Authors | Publication Date | Journal/Conference | Citation count | Highest h-index |