Elements of causal inference: foundations and learning algorithms J Peters, D Janzing, B Schölkopf The MIT Press, 2017 | 2113 | 2017 |
Nonlinear causal discovery with additive noise models P Hoyer, D Janzing, JM Mooij, J Peters, B Schölkopf Advances in neural information processing systems 21, 2008 | 1147 | 2008 |
Causal inference using invariant prediction: identification and confidence intervals J Peters, P Bühlmann, N Meinshausen Journal of the Royal Statistical Society, Series B (with discussion) 78 (5 …, 2016 | 988 | 2016 |
Counterfactual reasoning and learning systems: The example of computational advertising L Bottou, J Peters, J Quiñonero-Candela, D Charles, M Chickering, ... Journal of Machine Learning Research 14 (Léon Bottou, Jonas Peters, Joaquin …, 2013 | 794 | 2013 |
Inferring causation from time series in Earth system sciences J Runge, S Bathiany, E Bollt, G Camps-Valls, D Coumou, E Deyle, ... Nature communications 10 (1), 2553, 2019 | 695 | 2019 |
Kernel-based conditional independence test and application in causal discovery K Zhang, J Peters, D Janzing, B Schölkopf 27th Conference on Uncertainty in Artificial Intelligence (UAI 2011), AUAI …, 2012 | 677 | 2012 |
On causal and anticausal learning B Schölkopf, D Janzing, J Peters, E Sgouritsa, K Zhang, J Mooij 29th International Conference on Machine Learning (ICML 2012), 1255-1262, 2012, 2012 | 645 | 2012 |
Causal discovery with continuous additive noise models J Peters, JM Mooij, D Janzing, B Schölkopf The Journal of Machine Learning Research 15, 2009-2053, 2014 | 570 | 2014 |
Distinguishing cause from effect using observational data: methods and benchmarks JM Mooij, J Peters, D Janzing, J Zscheischler, B Schölkopf Journal of Machine Learning Research 17 (32), 1-102, 2016 | 540 | 2016 |
Invariant models for causal transfer learning M Rojas-Carulla, B Schölkopf, R Turner, J Peters Journal of Machine Learning Research 19 (36), 1-34, 2018 | 363 | 2018 |
Identifiability of Gaussian structural equation models with equal error variances J Peters, P Bühlmann Biometrika 101 (1), 219-228, 2014 | 347 | 2014 |
CAM: Causal additive models, high-dimensional order search and penalized regression P Bühlmann, J Peters, J Ernest | 321 | 2014 |
The hardness of conditional independence testing and the generalised covariance measure RD Shah, J Peters | 320 | 2020 |
Invariant causal prediction for nonlinear models C Heinze-Deml, J Peters, N Meinshausen Journal of Causal Inference 6 (2), 20170016, 2018 | 270 | 2018 |
Anchor regression: Heterogeneous data meet causality D Rothenhäusler, N Meinshausen, P Bühlmann, J Peters Journal of the Royal Statistical Society Series B: Statistical Methodology …, 2021 | 212 | 2021 |
Causal inference on time series using restricted structural equation models J Peters, D Janzing, B Schölkopf Advances in neural information processing systems 26, 2013 | 208 | 2013 |
Kernel-based tests for joint independence N Pfister, P Bühlmann, B Schölkopf, J Peters Journal of Royal Statistical Society, Series B 80, 5-31, 2017 | 193 | 2017 |
Causal inference on discrete data using additive noise models J Peters, D Janzing, B Scholkopf IEEE Transactions on Pattern Analysis and Machine Intelligence 33 (12), 2436 …, 2011 | 193 | 2011 |
Foundations of structural causal models with cycles and latent variables S Bongers, P Forré, J Peters, JM Mooij The Annals of Statistics 49 (5), 2885-2915, 2021 | 181* | 2021 |
Identifiability of causal graphs using functional models J Peters, J Mooij, D Janzing, B Schölkopf 27th Conference on Uncertainty in Artificial Intelligence (UAI 2011), AUAI …, 2012 | 173 | 2012 |