Frank Wood
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A new approach to probabilistic programming inference
F Wood, JW Meent, V Mansinghka
Artificial Intelligence and Statistics, 1024-1032, 2014
On the variability of manual spike sorting
F Wood, MJ Black, C Vargas-Irwin, M Fellows, JP Donoghue
IEEE Transactions on Biomedical Engineering 51 (6), 912-918, 2004
Learning disentangled representations with semi-supervised deep generative models
N Siddharth, B Paige, JW Van de Meent, A Desmaison, N Goodman, ...
Advances in Neural Information Processing Systems, 5925-5935, 2017
A nonparametric Bayesian alternative to spike sorting
F Wood, MJ Black
Journal of neuroscience methods 173 (1), 1-12, 2008
Diagnosis code assignment: models and evaluation metrics
A Perotte, R Pivovarov, K Natarajan, N Weiskopf, F Wood, N Elhadad
Journal of the American Medical Informatics Association 21 (2), 231-237, 2014
Hierarchically supervised latent Dirichlet allocation
AJ Perotte, F Wood, N Elhadad, N Bartlett
Advances in neural information processing systems, 2609-2617, 2011
A stochastic memoizer for sequence data
F Wood, C Archambeau, J Gasthaus, L James, YW Teh
Proceedings of the 26th annual international conference on machine learning†…, 2009
A non-parametric Bayesian method for inferring hidden causes
F Wood, T Griffiths, Z Ghahramani
arXiv preprint arXiv:1206.6865, 2012
Tighter variational bounds are not necessarily better
T Rainforth, AR Kosiorek, TA Le, CJ Maddison, M Igl, F Wood, YW Teh
arXiv preprint arXiv:1802.04537, 2018
Semantics for probabilistic programming: higher-order functions, continuous distributions, and soft constraints
S Staton, F Wood, H Yang, C Heunen, O Kammar
2016 31st annual acm/ieee symposium on logic in computer science (lics), 1-10, 2016
Inference compilation and universal probabilistic programming
TA Le, AG Baydin, F Wood
Artificial Intelligence and Statistics, 1338-1348, 2017
Inference networks for sequential Monte Carlo in graphical models
B Paige, F Wood
International Conference on Machine Learning, 3040-3049, 2016
Auto-encoding sequential monte carlo
TA Le, M Igl, T Rainforth, T Jin, F Wood
arXiv preprint arXiv:1705.10306, 2017
Online learning rate adaptation with hypergradient descent
AG Baydin, R Cornish, DM Rubio, M Schmidt, F Wood
arXiv preprint arXiv:1703.04782, 2017
Deep variational reinforcement learning for POMDPs
M Igl, L Zintgraf, TA Le, F Wood, S Whiteson
arXiv preprint arXiv:1806.02426, 2018
The sequence memoizer
F Wood, J Gasthaus, C Archambeau, L James, YW Teh
Communications of the ACM 54 (2), 91-98, 2011
Image searching techniques
GS Pass, F Wood
US Patent 6,556,710, 2003
A compilation target for probabilistic programming languages
B Paige, F Wood
arXiv preprint arXiv:1403.0504, 2014
Design and implementation of probabilistic programming language anglican
D Tolpin, JW van de Meent, H Yang, F Wood
Proceedings of the 28th Symposium on the Implementation and Application of†…, 2016
Using synthetic data to train neural networks is model-based reasoning
TA Le, AG Baydin, R Zinkov, F Wood
2017 International Joint Conference on Neural Networks (IJCNN), 3514-3521, 2017
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