Symbolic regression
This page was last updated on 2026-06-22 08:18:38 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 | 5063 | 80 | 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 | 144 | 26 | 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 | 1005 | 80 | 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 | 632 | 80 | 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 | 671 | 80 | 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 | 426 | 80 | 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 | 364 | 80 | 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 | 81 | 27 | 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, arXiv.org | 56 | 80 | 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 | 104 | 80 | 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 | 1680 | 80 | 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 | 361 | 80 | open_in_new |
| visibility_off | Learning sparse nonlinear dynamics via mixed-integer optimization | D. Bertsimas, Wes Gurnee | 2022-06-01 | Nonlinear Dynamics | 69 | 99 | 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 | 181 | 80 | open_in_new |
| Abstract | Title | Authors | Publication Date | Journal/ Conference | Citation count | Highest h-index | View recommendations |
Recommended articles on Symbolic regression
| Abstract | Title | Authors | Publication Date | Journal/Conference | Citation count | Highest h-index |
|---|---|---|---|---|---|---|
| visibility_off | How Low Can You Go? Active Learning for Sparse Model Discovery in the Ultra-Low-Data Limit | A. Larrañaga, Urban Fasel, Steven L. Brunton | 2026-06-10 | ArXiv | 0 | 10 |
| visibility_off | WSINDy for Model Predictive Control with Applications to Fusion, Drones, and Chaos | Cristian López, M. Partridge, S. D. Pascuale, J. Lore, Andrew J. Christlieb, Stephen Becker, D. Bortz | 2026-04-25 | ArXiv | 0 | 9 |
| visibility_off | Multi-Fidelity SINDy: Sparse Discovery of Nonlinear Dynamical Systems with Fidelity-Weighted Measurements | Filippo Zacchei, A. Larrañaga, A. Frangi, A. Manzoni, S. Brunton | 2026-06-14 | ArXiv | 0 | 80 |
| visibility_off | Data-driven discovery of governing differential equations across physical systems | Siyu Lou, Hao Xu, Wenguang Wang, Lu Lu, Hao Sun, Yang Liu, Linfeng Zhang, Dongxiao Zhang, Yuntian Chen | 2026-06-08 | ArXiv | 0 | 12 |
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| visibility_off | PowerSINDy: Identifying Nonlinear Time-Dependent Dynamics in Power Grid Frequency | Xinyi Wen, Xiao Li, L. R. Gorjão, V. Hagenmeyer, Benjamin Schafer | 2026-05-04 | ArXiv | 0 | 12 |
| visibility_off | Discovering interpretable low-dimensional dynamics using maximum entropy | Michael C. Chung, T. Mohan, P. Dixit, Juan Guan | 2026-05-16 | ArXiv | 0 | 20 |
| visibility_off | Discovery of Nonlinear Dynamics with Automated Basis Function Generation | Mohammad Amin Basiri, Charles Nicholson | 2026-05-10 | ArXiv | 0 | 3 |
| visibility_off | EqOD: Symmetry-Informed Stability Selection for PDE Identification | Gnankan Landry Regis N'guessan, Bum Jun Kim | 2026-05-12 | ArXiv | 0 | 8 |
| visibility_off | Model discovery for dynamical systems with complex-valued product units | M. Bruckmann, B. Dellen, Uwe Jaekel | 2026-05-26 | ArXiv | 0 | 2 |
| visibility_off | An integrated interpretable control effectiveness learning and nonlinear control allocation methodology for overactuated aircrafts | Umut Demir, Aamir Ahmad, Walter Fichter | 2026-06-11 | ArXiv | 0 | 2 |
| visibility_off | Moving from table to graph in physics-informed spatio-temporal symbolic regression | Teddy Lazebnik, Alexander Liberzon | 2026-05-23 | Scientific Reports | 0 | 6 |
| visibility_off | Quasi-potential of stochastic dynamics via instanton-guided sparse identification | Leonardo de Souza Grigorio, Mnerh Alqahtani | 2026-05-26 | Journal of Physics A: Mathematical and Theoretical | 0 | 2 |
| visibility_off | Data-driven sparse identification of governing PDEs via knockoff filters and multi-criteria trade-offs | Pongpisit Thanasutives, Naichang Ke, Y. Kawahara | 2026-05-26 | ArXiv | 0 | 24 |
| visibility_off | Data Enrichment for Symbolic Regression Using Diffusion Models | Simon De Reuver, Tamás Tóth, Teddy Lazebnik | 2026-05-31 | ArXiv | 0 | 2 |
| visibility_off | Pyphysdisc: co-evolutionary symbolic regression with adaptive smoothing windows for autonomous physical law discovery from noisy data | Ali Tozar | 2026-05-01 | International Journal of Dynamics and Control | 0 | 2 |
| visibility_off | From inverse problems to neural operators: prediction, mechanism, and generalization of data-driven models | Conor Rowan | 2026-06-08 | ArXiv | 0 | 3 |
| visibility_off | The finite expression method for turbulent dynamics with high-order moment recovery | Xingjian Xu, D. Qi, Chunmei Wang | 2026-05-11 | ArXiv | 0 | 15 |
| visibility_off | Sparse Approximation Method for Accurate Uncertainty Propagation through a Nonlinear System | Amit Jain, Puneet Singla, Roshan Eapen | 2026-06-01 | The Journal of the Astronautical Sciences | 0 | 4 |
| visibility_off | A likelihood-based framework for simultaneously learning both noise and growth dynamics using biologically-informed neural networks | Rebecca M. Crossley, R. Baker | 2026-06-11 | ArXiv | 0 | 5 |
| visibility_off | Optimizing Reservoir Computing for Reconstructing Ergodic Properties | A. Kawano, Ilia Soroka, Greg J. Stephens | 2026-05-02 | ArXiv | 0 | 3 |
| visibility_off | A Dynamic Subspace Approach for Low-rank Approximation of Large-scale Nonlinear Systems | J. Dechant, R. Geelen, Shane A. McQuarrie, Johann Guilleminot | 2026-05-25 | ArXiv | 0 | 6 |
| visibility_off | Extracting Governing Equations from Latent Dynamics via Multi-View Contrastive Learning | P. Muratore, Mackenzie W. Mathis | 2026-06-11 | ArXiv | 0 | 30 |
| visibility_off | A Quadratic Order Reduction -- Gaussian Process Ordinary Differential Equation framework for the inference of Large Continuous Dynamical Systems | Guglielmo Padula, M. Girfoglio, G. Rozza | 2026-06-11 | ArXiv | 0 | 55 |
| visibility_off | Revealing dynamics of non-autonomous complex systems from data | Chengzuo Zhuge, Zhen Jiang, Zhefan Xu, Wei Chen | 2026-05-10 | ArXiv | 0 | 15 |
| visibility_off | Flow map learning in nonlinear vector autoregressive models: influence of the feature-library structure on the training error | Markus Gross | 2026-05-29 | ArXiv | 0 | 2 |
| visibility_off | Equation-Free Digital Twins for Nonlinear Structural Dynamics | M. Abaei, A. Bahootoroody, Arttu Polojarvi, H. Remes, U. T. Tygesen, Mikko Suominen, Michael Beer | 2026-05-01 | ArXiv | 0 | 32 |
| visibility_off | Nonlinear GENERIC Informed Neural Networks (N-GINNs): learning GENERIC dynamics with non-quadratic dissipation potentials | Vojtvech Votruba, Zequn He, Weilun Qiu, Celia Reina, Michal Pavelka | 2026-05-09 | ArXiv | 0 | 4 |
| visibility_off | A Data-Free Symbolic Regression Approach for Solving Equations | S. Garmaev, Vinay Sharma, Olga Fink | 2026-06-05 | ArXiv | 0 | 3 |
| visibility_off | Learning partially observed systems with neural Hamiltonian ordinary differential equations | Sunniva Meltzer, Sølve Eidnes, Alexander J. Stasik | 2026-05-22 | ArXiv | 0 | 9 |
| visibility_off | Meta-Inverse Physics-Informed Neural Networks for High-Dimensional Ordinary Differential Equations | Zhao Wei, Kenneth Hor Cheng Koh, S. Chin, J. Chan, Chin Chun Ooi, Y. Ong | 2026-05-05 | ArXiv | 0 | 10 |
| visibility_off | Learning dynamical systems with biochemically informed neural ordinary differential equations | Luis L. Fonseca, Reinhard C. Laubenbacher, Lucas Böttcher | 2026-05-22 | bioRxiv | 0 | 7 |
| visibility_off | Learning effective models from network dynamics data with multiple initial conditions using weak form SINDy | Moyi Tian, D. Messenger, Vanja Dukic, Nancy Rodríguez, David M. Bortz | 2026-05-28 | ArXiv | 0 | 4 |
| visibility_off | PyCC.id: A package for hypothesis-driven equation discovery with structural identifiability | Federico J. Gonzalez | 2026-05-07 | ArXiv | 0 | 4 |
| visibility_off | Calibrated Intrusive Reduced-Order Model of Burgers’ Equation Using a Combination of Proper Orthogonal Decomposition and LSTM Deep Learning Algorithm | Mina Golzar, M. K. Moayyedi, Faranak Fotouhi-Ghazvini, M. Vahabi, Hossein Fotouhi | 2026-05-09 | Modelling | 0 | 12 |
| visibility_off | PIDM-DP: Physics-Informed Diffusion with Dormand-Prince Integration for Chaotic System Identification and State Reconstruction across Multiple Dynamical Regimes | S. Dabral | 2026-05-26 | ArXiv | 0 | 0 |
| visibility_off | Discovering Ordinary Differential Equations with LLM-Based Qualitative and Quantitative Evaluation | Sumie Song, Bong Gyun Shin, Jae Yong Lee | 2026-05-08 | ArXiv | 0 | 8 |
| visibility_off | Accelerating the Simulation of Ordinary Differential Equations Through Physics-Preserving Neural Networks | Andrew C. Tagg, Andrew Frandsen, An Ning | 2026-05-07 | ArXiv | 0 | 5 |
| visibility_off | Reduced-order modeling of nonlinear multiscale industrial systems via sparse regression in latent representations. | Dongni Jia, Xiaofeng Zhou, Shuai Li, Haibo Shi, Linzhi Li | 2026-05-20 | Scientific reports | 0 | 14 |
| visibility_off | Nonlinear extensions and coordinate selection for operator-based causality analysis, with application to chaotic wake flows | V. Jiménez, S. L. Clainche, Ankit Srivastava, S. Dawson | 2026-05-01 | Journal of Physics: Conference Series | 0 | 20 |
| visibility_off | Control-oriented cluster-based reduced-order modelling | P. Olivucci, David E Rival, Richard Semaan | 2026-04-28 | ArXiv | 0 | 4 |
| visibility_off | Information bottleneck for learning the phase space of dynamics from high-dimensional experimental data | K. Martini, Eslam Abdelaleem, Paarth Gulati, Ilya Nemenman | 2026-04-27 | ArXiv | 1 | 4 |
| visibility_off | Physics-Informed Neural Networks and Radial Basis Functions for PDEs with Dirac Delta Sources | Manuel Reyna, A. Tartakovsky | 2026-06-10 | ArXiv | 0 | 1 |
| visibility_off | Reservoir computing for system identification and model predictive control. | Jan P. Williams, J. N. Kutz, Krithika Manohar | 2026-05-01 | Neural networks : the official journal of the International Neural Network Society | 0 | 14 |
| visibility_off | Learning Koopman operators for coupled systems via information on governing equations of subsystems | Tatsuya Naoi, Jun Ohkubo | 2026-05-03 | ArXiv | 0 | 0 |
| visibility_off | Learning regime-dependent governing equations: A symbolic decision tree approach | Ilias Mitrai, Tong Liu, Gabriel E. Sanoja | 2026-05-22 | ArXiv | 0 | 16 |
| Abstract | Title | Authors | Publication Date | Journal/Conference | Citation count | Highest h-index |