Publications by Dr C.E. RasmussenNumber of items: 69.
ArticleTurner, R and Rasmussen, CE (2012) Model based learning of sigma points in unscented Kalman filtering. Neurocomputing, 80. pp. 47-53. ISSN 0925-2312 Deisenroth, MP and Turner, RD and Huber, MF and Hanebeck, UD and Rasmussen, CE (2012) Robust filtering and smoothing with gaussian processes. IEEE Transactions on Automatic Control, 57. pp. 1865-1871. ISSN 0018-9286 Duvenaud, D and Nickisch, H and Rasmussen, CE (2011) Additive Gaussian processes. Advances in Neural Information Processing Systems 24: 25th Annual Conference on Neural Information Processing Systems 2011, NIPS 2011. McHutchon, A and Rasmussen, CE (2011) Gaussian Process training with input noise. Advances in Neural Information Processing Systems 24: 25th Annual Conference on Neural Information Processing Systems 2011, NIPS 2011. Turner, R and Rasmussen, CE (2011) Model based learning of sigma points in unscented Kalman filtering. Neurocomputing. ISSN 0925-2312 Hall, J and Rasmussen, CE and MacIejowski, J (2011) Reinforcement learning with reference tracking control in continuous state spaces. Proceedings of the IEEE Conference on Decision and Control. pp. 6019-6024. ISSN 0191-2216 Lazaro-Gredilla, M and Quinonero-Candela, J and Rasmussen, CE and Figueiras-Vidal, AR (2010) Sparse Spectrum Gaussian Process Regression. J MACH LEARN RES, 11. pp. 1865-1881. ISSN 1532-4435 Dilan, G and Carl Edward, R (2010) Dirichlet process gaussian mixture models: choice of the base distribution. Journal of Computer Science and Technology, 25. pp. 615-626. ISSN 1000-9000 Nickisch, H and Rasmussen, CE (2010) Gaussian mixture modeling with Gaussian process latent variable models. Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics), 6376 L. pp. 272-282. ISSN 0302-9743 Saatçi, Y and Turner, R and Rasmussen, CE (2010) Gaussian process change point models. ICML 2010 - Proceedings, 27th International Conference on Machine Learning. pp. 927-934. Carl Edward, R and Hannes, N (2010) Gaussian processes for machine learning (GPML) toolbox. Journal of Machine Learning Research, 11. pp. 3011-3015. ISSN 1533-7928 Turner, R and Rasmussen, CE (2010) Model based learning of sigma points in unscented Kalman filtering. Proceedings of the 2010 IEEE International Workshop on Machine Learning for Signal Processing, MLSP 2010. pp. 178-183. Turner, R and Deisenroth, MP and Rasmussen, CE (2010) State-space inference and learning with Gaussian processes. Journal of Machine Learning Research, 9. pp. 868-875. ISSN 1532-4435 Deisenroth, MP and Rasmussen, CE and Peters, J (2009) Gaussian process dynamic programming. Neurocomputing, 72. pp. 1508-1524. ISSN 0925-2312 Görür, D and Rasmussen, CE (2009) Nonparametric mixtures of factor analyzers | Parametrik olmayan etmen çözümlemesi karişimlari. 2009 IEEE 17th Signal Processing and Communications Applications Conference, SIU 2009. pp. 708-711. Hannes, N and C E, R (2008) Approximations for Binary Gaussian Process Classification. Journal of Machine Learning Research, 9. pp. 2035-2078. ISSN 1532-4435 Rasmussen, CE and de la Cruz, BJ and Ghahramani, Z and Wild, DL (2008) Modeling and visualizing uncertainty in gene expression clusters using dirichlet process mixtures. IEEE/ACM Transactions on Computational Biology and Bioinformatics, 6. pp. 615-628. ISSN 1545-5963 Sonnenburg, S and Braun, ML and Ong, CS and Bengio, S and Bottou, L and Holmes, G and LeCun, Y and Müller, KR and Pereira, F and Rasmussen, CE and Rätch, G and Schölkopf, B and Smola, A and Vincent, P and Weston, J and Williamson, RC (2007) The need for open source software in machine learning. Jounal of Machine Learning Research, 8. pp. 2443-2466. ISSN 1533-7928 Kuss, M and Rasmussen, CE (2006) Assessing approximate inference for binary Gaussian process classification. Journal of Machine Learning Research, 6. pp. 1679-1704. ISSN 1532-4435 Pfingsten, T and Herrmann, D and Rasmussen, CE (2006) Model-based design analysis and yield optimization. IEEE Transactions on Semiconductor Manufacturing, 19. pp. 475-486. ISSN 0894-6507 Quiñonero Candela, J and Rasmussen, CE (2006) A unifying view of sparse approximate Gaussian process regression. Journal of Machine Learning Research, 6. pp. 1939-1960. ISSN 1532-4435 Anderson, IK and Szymkowiak, A and Rasmussen, CE and Hanson, LG and Marstrand, JR and Larsson, HBW and Hansen, LK (2002) Perfusion quantification using Gaussian process deconvolution. Magnetic Resonance in Medicine, 48. pp. 351-361. ISSN 0740-3194 Hansen, LK and Rasmussen, CE (1994) Pruning from adaptive regularization. Neural Computation, 6. pp. 1223-1231. ISSN 0899-7667 Rasmussen, CE and Willshaw, DJ (1993) Presynaptic and postsynaptic competition in models for the development of neuromuscular connections. Biological Cybernetics, 68. pp. 409-419. ISSN 0340-1200 BookRasmussen, CE and Williams, CKI (2006) Gaussian processes for machine learning. MIT Press, Cambridge, MA, USA, -. Rasmussen, Carl Edward, ed. (2004) Pattern Recognition: Proceedings of the 26th DAGM Symposium on Pattern Recognition held in Tubingen, Germany, August 2004. Lecture Notes in Computer Science . Springer, Berlin, Germany, -. Book SectionRasmussen, CE and Deisenroth, MP (2008) Probabilistic inference for fast learning in control. In: Recent Advances in Reinforcement Learning. Lecture Notes in Computer Science, subseries: Lecture Notes in Artificial Intelligence . Springer, pp. 229-242. ISBN 9783540897217 Quiñonero Candela, J and Rasmussen, CE and Williams, CKI (2007) Approximation methods for Gaussian process regression. In: Large-Scale Kernel Machines. Neural Information Processing series . MIT Press, Cambridge, Massachusetts, USA, pp. 203-224. Quiñonero Candela, J and Rasmussen, CE and Sinz, F and Bousquet, O and Scholkopf, B (2006) Evaluating predictive uncertainty challenge. In: Machine Learning Challenges. Lecture Notes in Computer Science, 3944 . Springer, Germany, pp. 1-27. Quiñonero Candela, J and Rasmussen, CE (2005) Analysis of some methods for reduced rank Gaussian process regression. In: Switching and Learning in Feedback Systems. Lecture Notes in Computer Science: Theoretical Computer Science and General Issues, 3355 . Springer, Germany, pp. 98-127. Rasmussen, CE (2004) Gaussian processes in machine learning. In: Advanced Lectures on Machine Learning. Lecture Notes in Computer Science: Lecture Notes in Artificial Intelligence, 3176 . Springer, Germany, pp. 63-71. Conference or Workshop ItemDeisenroth, MP and Rasmussen, CE (2011) PILCO: A model-based and data-efficient approach to policy search. In: 28th International Conference on Machine Learning, ICML 2011, 28-6-2011 to 2-7-2011, Bellevue, Washington, USA pp. 465-473.. Deisenroth, MP and Peters, J and Rasmussen, CE (2008) Approximate dynamic programming with gaussian processes. In: American Control Conference 2008, ACC'08, 11-6-2008 to 13-6-2008, Seattle, Washington, USA. Deisenroth, MP and Rasmussen, CE and Peters, J (2008) Model-based reinforcement learning with continuous states and actions. In: European Symposium on Artificial Neural Networks, Advances in Computational Intelligence and Learning (ESANN) 2008, 23-4-2008 to 25-4-2008, Bruges, Belgium. Deisenroth, MP and Peters, J and Rasmussen, CE (2008) Approximate dynamic programming with Gaussian processes. In: UNSPECIFIED pp. 4480-4485.. Gorur, D and Jakel, F and Rasmussen, CE (2006) A choice model with infinitely many latent features. In: The 23rd International Conference on Machine Learning; ICML 2006, -8-2006 to --, Pittsburgh, PA, USA pp. 361-368.. Kuss, M and Rasmussen, CE (2006) Assessing approximations for Gaussian process classification. In: 19th Annual Conference on Neural Information Processing Systems (NIPS Workshop), 9-12-2005 to --, Whistler, Canada pp. 699-706.. Rasmussen, CE and Quinonero Candela, J (2005) Healing the relevance vector machine through augmentation. In: The 22nd International Conference on Machine Learning: ICML 2005, -8-2005 to -- pp. 689-696.. Tanner, TG and Hill, NJ and Rasmussen, CE and Wichmann, FA (2005) Efficient adaptive sampling of the psychometric function by maximising information gain. In: 8th Conference onTubingen Perception, TWK' 05, --2005 to --, Tubingen, Germany p.109-.. Sinz, F and Quinonero Candela, J and Bakir, GH and Rasmussen, CE and Franz, MO (2004) Learning depth from stereo. In: The 26th DAGM Symposium on Pattern Recognition, -8-2004 to -- pp. 245-252.. Gorur, D and Rasmussen, CE and Tolias, AS and Sinz, F and Logothetis, NK (2004) Modelling spikes with mixtures of factor analysers. In: The 26th DAGM Symposium on Pattern Recognition, -8-2004 to -- pp. 391-398.. Franz, MO and Kwon, Y and Rasmussen, CE and Scholkopf, B (2004) Semi-supervised kernel regression using whitened function classes. In: The 26th DAGM Symposium on Pattern Recognition, -8-2004 to -- pp. 18-26.. Kocijan, J and Murray Smith, R and Rasmussen, CE and Girard, A (2004) Gaussian process model based predictive control. In: The American Control Conference v.3, -6-2004 to -- pp. 2214-2219.. Rasmussen, CE and Kuss, M (2004) Gaussian processes in reinforcement learning. In: 17th Annual Conference on Neural Information Processing Systems, NIPS'03, -12-2003 to --, British Columbia, Canada pp. 751-759.. Eichhorn, J and Tolias, AS and Zien, A and Kuss, M and Rasmussen, CE and Weston, J and Logothetis, NK and Scholkopf, B (2004) Prediction on spike data using kernel algorithms. In: 17th Annual Conference on Neural Information Processing Systems, NIPS'03, -12-2003 to --, British Columbia, Canada pp. 1367-1374.. Snelson, E and Rasmussen, CE and Ghahramani, Z (2004) Warped Gaussian processes. In: Neural Information Processing Systems, NIPS, 17th Annual Conference, -12-2003 to --, British Columbia, Canada pp. 337-344.. Dubey, A and Hwang, S and Rangel, C and Rasmussen, CE and Ghahramani, Z and Wild, DL (2004) Clustering protein sequence and structure space with infinite Gaussian mixture models. In: The Pacific Symposium on Biocomputing 2004, 6-1-2004 to 10-1-2004, Hawaii, HI, US pp. 399-410.. Murray Smith, RD and Sbarbaro, CE and Rasmussen, CE and Girard, A (2003) Adaptive, cautious, predictive control with Gaussian process priors. In: The 13th IFAC Symposium on System Identification; SYSID '03 v.3, -8-2003 to -- pp. 1155-1160.. Quiñonero Candela, J and Girard, A and Larsen, J and Rasmussen, CE (2003) Propagation of uncertainty in Bayesian kernel models - application to multiple-step ahead forecasting. In: 28th IEEE International Conference on Acoustics Speech and Signal Processing, ICASSP 2003, 6-4-2003 to 10-4-2003, Hong Kong, China pp. 701-704.. Kocijan, JB and Banko, B and Likar, A and Girard, A and Murray Smith, R and Rasmussen, CE (2003) A case based comparison of identification with neural network and Gaussian process models. In: The IFAC International Conference on Intelligent Control Systems and Signal Processing; (ICONS 2003), -4-2003 to --, Faro, Portugal pp. 129-134.. Rasmussen, CE and Ghahramani, Z (2003) Bayesian Monte Carlo. In: 16th Annual Conference on Neural Information Processing Systems, NIPS'02, -12-2002 to --, British Columbia, Canada pp. 505-512.. Solak, E and Murray Smith, R and Leithead, WE and Leith, D and Rasmussen, CE (2003) Derivative observations in Gaussian process models of dynamic systems. In: 16th Annual Conference on Neural Information Processing Systems, NIPS'02, -12-2002 to --, British Columbia, Canada pp. 1057-1064.. Girard, A and Rasmussen, CE and Quiñonero Candela, J and Murray Smith, R (2003) Gaussian process priors with uncertain inputs - application to multiple-step ahead time series forecasting. In: 16th Annual Conference on Neural Information Processing Systems, NIPS'02, -12-2002 to --, British Columbia, Canada pp. 545-552.. Rasmussen, CE (2003) Gaussian processes to speed up hybrid Monte Carlo for expensive Bayesian integrals. In: Bayesian Statistics 7: the 7th Valencia International Meeting, -- to -- pp. 651-659.. Kocijan, J and Murray Smith, R and Rasmussen, CE and Likar, B (2003) Predictive control with Gaussian process models. In: The IEEE Region 8 Conference Eurocon 2003: The Computer as a Tool v.1, --2003 to -- pp. 352-356.. Quiñonero Candela, J and Girard, A and Larsen, J and Rasmussen, CE (2003) Propagation of uncertainty in Bayesian kernel models - application to multiple-step ahead forecasting. In: 2003 IEEE International Workshop on Neural Networks for Signal Processing, --2003 to --. Wild, DL and Rasmussen, CE and Ghahramani, Z and Cregg, J and de la Cruz, BJ and Kan, C-C and Scanlon, K (2002) A Bayesian approach to modelling uncertainty in gene expression clusters. In: 3rd International Conference on Systems Biology, --2002 to --, Stockholm, Sweden. Rasmussen, CE and Ghahramani, Z (2002) Infinite mixtures of Gaussian process experts. In: Advances in Neural Information Processing Systems 14: the 2001 Neural Information Processing Systems (NIPS) Conference, --2001 to -- pp. 881-888.. Beal, MJ and Ghahramani, Z and Rasmussen, CE (2002) The infinite hidden Markov model. In: Advances in Neural Information Processing Systems 14: the 2001 Neural Information Processing Systems (NIPS) Conference, --2001 to --, British Columbia, Canada pp. 577-585.. Rasmussen, CE and Ghahramani, Z (2001) Occam's razor. In: 14th Annual Conference on Advances on Neural Information Processing Systems, NIPS 2000, -11-2000 to --, Denver, CO, US pp. 294-300.. Højen Sørensen, PA and Rasmussen, CE and Hansen, LK (2000) Bayesian modelling of fMRI time series. In: 13th Annual Conference on Advances in Neural Information Processing Systems, NIPS' 99, -12-1999 to -- pp. 754-760.. Rasmussen, CE (2000) The infinite Gaussian mixture model. In: 13th Annual Conference on Advances in Neural Information Processing Systems, NIPS' 99, -12-1999 to -- pp. 554-560.. Williams, CKI and Rasmussen, CE (1996) Gaussian processes for regression. In: 9th Annual Conference on Advances in Neural Information Processing Systems, NIPS' 95, -11-1995 to --, Denver, Colorado, USA. Rasmussen, CE (1996) A practical Monte Carlo implementation of Bayesian learning. In: 9th Annual Conference on Advances in Neural Information Processing Systems, NIPS' 95, -11-1995 to --, Denver, Colorado, USA pp. 598-604.. MonographKuss, M and Pfingsten, T and Csato, L and Rasmussen, CE (2005) Approximate inference for robust Gaussian process regression. Technical Report. Max Planck Institute: Biological Cybernetics, Tübingen, Germany. Quiñonero Candela, J and Girard, A and Rasmussen, CE (2003) Prediction at an uncertain input for Gaussian processes and relevance vector machines - application to multiple-step ahead time-series forecasting. Technical Report. Technical University of Denmark, Denmark. Williams, CKI and Rasmussen, CE and Scwaighofer, A and Tresp, V (2002) Observations on the Nystrom method for Gaussian process prediction. Technical Report. University of Edinburgh and University College London, London, UK. Rasmussen, CE and Neal, RM and Hinton, GE and Van Camp, D and Revow, M and Ghahramani, Z and Kustra, R and Tibshirani, R (1996) The delve manual. Technical Report. University of Toronto: Department of Computer Science, Toronto, Canada. ThesisRasmussen, CE (1996) Evaluation of Gaussian processes and other methods for non-linear regression. PhD thesis, UNSPECIFIED. |
