The striatum organizes 3D behavior via moment-to-moment action selection JE Markowitz, WF Gillis, CC Beron, SQ Neufeld, K Robertson, ND Bhagat, ... Cell 174 (1), 44-58. e17, 2018 | 368 | 2018 |
Discovering Latent Network Structure in Point Process Data SW Linderman, RP Adams Proceedings of The 31st International Conference on Machine Learning, 1413–1421, 2014 | 344 | 2014 |
Bayesian learning and inference in recurrent switching linear dynamical systems S Linderman, M Johnson, A Miller, R Adams, D Blei, L Paninski Artificial intelligence and statistics, 914-922, 2017 | 284* | 2017 |
Learning latent permutations with gumbel-sinkhorn networks G Mena, D Belanger, S Linderman, J Snoek arXiv preprint arXiv:1802.08665, 2018 | 260 | 2018 |
Variational sequential monte carlo C Naesseth, S Linderman, R Ranganath, D Blei International conference on artificial intelligence and statistics, 968-977, 2018 | 246 | 2018 |
Simplified state space layers for sequence modeling JTH Smith, A Warrington, SW Linderman The International Conference on Learning Representations, 2022 | 202 | 2022 |
Reparameterization gradients through acceptance-rejection sampling algorithms C Naesseth, F Ruiz, S Linderman, D Blei Artificial Intelligence and Statistics, 489-498, 2017 | 133 | 2017 |
Dependent multinomial models made easy: Stick-breaking with the Pólya-Gamma augmentation S Linderman, MJ Johnson, RP Adams Advances in neural information processing systems 28, 2015 | 126 | 2015 |
Probabilistic models of larval zebrafish behavior reveal structure on many scales RE Johnson, S Linderman, T Panier, CL Wee, E Song, KJ Herrera, ... Current Biology 30 (1), 70-82. e4, 2020 | 105 | 2020 |
Spontaneous behaviour is structured by reinforcement without explicit reward JE Markowitz, WF Gillis, M Jay, J Wood, RW Harris, R Cieszkowski, ... Nature 614 (7946), 108-117, 2023 | 89 | 2023 |
Hierarchical recurrent state space models reveal discrete and continuous dynamics of neural activity in C. elegans S Linderman, A Nichols, D Blei, M Zimmer, L Paninski BioRxiv, 621540, 2019 | 78 | 2019 |
Tree-structured recurrent switching linear dynamical systems for multi-scale modeling J Nassar, SW Linderman, M Bugallo, IM Park arXiv preprint arXiv:1811.12386, 2018 | 73 | 2018 |
BehaveNet: nonlinear embedding and Bayesian neural decoding of behavioral videos E Batty, M Whiteway, S Saxena, D Biderman, T Abe, S Musall, W Gillis, ... Advances in Neural Information Processing Systems 32, 2019 | 72 | 2019 |
Scalable bayesian inference for excitatory point process networks SW Linderman, RP Adams arXiv preprint arXiv:1507.03228, 2015 | 70 | 2015 |
Recurrent switching dynamical systems models for multiple interacting neural populations J Glaser, M Whiteway, JP Cunningham, L Paninski, S Linderman Advances in neural information processing systems 33, 14867-14878, 2020 | 69 | 2020 |
Generalized shape metrics on neural representations AH Williams, E Kunz, S Kornblith, S Linderman Advances in Neural Information Processing Systems 34, 4738-4750, 2021 | 66 | 2021 |
Bayesian latent structure discovery from multi-neuron recordings S Linderman, RP Adams, JW Pillow Advances in Neural Information Processing Systems, 2002-2010, 2016 | 66 | 2016 |
Bayesian latent structure discovery from multi-neuron recordings S Linderman, RP Adams, JW Pillow Advances in Neural Information Processing Systems, 2002-2010, 2016 | 66 | 2016 |
Reparameterizing the birkhoff polytope for variational permutation inference S Linderman, G Mena, H Cooper, L Paninski, J Cunningham International Conference on Artificial Intelligence and Statistics, 1618-1627, 2018 | 57 | 2018 |
A Bayesian nonparametric approach for uncovering rat hippocampal population codes during spatial navigation SW Linderman, MJ Johnson, MA Wilson, Z Chen Journal of neuroscience methods 263, 36-47, 2016 | 53* | 2016 |