| 2009 | ||
|---|---|---|
| 112 | Graham W. Taylor, Geoffrey E. Hinton: Factored conditional restricted Boltzmann Machines for modeling motion style. ICML 2009: 129 | |
| 111 | Tijmen Tieleman, Geoffrey E. Hinton: Using fast weights to improve persistent contrastive divergence. ICML 2009: 130 | |
| 110 | Kay Yu, Ruslan Salakhutdinov, Yann LeCun, Geoffrey E. Hinton, Yoshua Bengio: Workshop summary: Workshop on learning feature hierarchies. ICML 2009: 165 | |
| 109 | Ruslan Salakhutdinov, Geoffrey E. Hinton: Semantic hashing. Int. J. Approx. Reasoning 50(7): 969-978 (2009) | |
| 108 | Andriy Mnih, Zhang Yuecheng, Geoffrey E. Hinton: Improving a statistical language model through non-linear prediction. Neurocomputing 72(7-9): 1414-1418 (2009) | |
| 107 | Geoffrey E. Hinton: Deep belief networks. Scholarpedia 4(5): 5947 (2009) | |
| 2008 | ||
| 106 | Zhang Yuecheng, Andriy Mnih, Geoffrey E. Hinton: Improving a statistical language model by modulating the effects of context words. ESANN 2008: 493-498 | |
| 105 | Vinod Nair, Josh Susskind, Geoffrey E. Hinton: Analysis-by-Synthesis by Learning to Invert Generative Black Boxes. ICANN (1) 2008: 971-981 | |
| 104 | Andriy Mnih, Geoffrey E. Hinton: A Scalable Hierarchical Distributed Language Model. NIPS 2008: 1081-1088 | |
| 103 | Vinod Nair, Geoffrey E. Hinton: Implicit Mixtures of Restricted Boltzmann Machines. NIPS 2008: 1145-1152 | |
| 102 | Tanya Schmah, Geoffrey E. Hinton, Richard S. Zemel, Steven L. Small, Stephen C. Strother: Generative versus discriminative training of RBMs for classification of fMRI images. NIPS 2008: 1409-1416 | |
| 101 | Ilya Sutskever, Geoffrey E. Hinton: Using matrices to model symbolic relationship. NIPS 2008: 1593-1600 | |
| 100 | Ilya Sutskever, Geoffrey E. Hinton, Graham W. Taylor: The Recurrent Temporal Restricted Boltzmann Machine. NIPS 2008: 1601-1608 | |
| 99 | Ilya Sutskever, Geoffrey E. Hinton: Deep, Narrow Sigmoid Belief Networks Are Universal Approximators. Neural Computation 20(11): 2629-2636 (2008) | |
| 2007 | ||
| 98 | Roland Memisevic, Geoffrey E. Hinton: Unsupervised Learning of Image Transformations. CVPR 2007 | |
| 97 | Andriy Mnih, Geoffrey E. Hinton: Three new graphical models for statistical language modelling. ICML 2007: 641-648 | |
| 96 | Ruslan Salakhutdinov, Andriy Mnih, Geoffrey E. Hinton: Restricted Boltzmann machines for collaborative filtering. ICML 2007: 791-798 | |
| 95 | Simon Osindero, Geoffrey E. Hinton: Modeling image patches with a directed hierarchy of Markov random fields. NIPS 2007 | |
| 94 | Ruslan Salakhutdinov, Geoffrey E. Hinton: Using Deep Belief Nets to Learn Covariance Kernels for Gaussian Processes. NIPS 2007 | |
| 93 | Geoffrey E. Hinton: Boltzmann machine. Scholarpedia 2(5): 1668 (2007) | |
| 2006 | ||
| 92 | Graham W. Taylor, Geoffrey E. Hinton, Sam T. Roweis: Modeling Human Motion Using Binary Latent Variables. NIPS 2006: 1345-1352 | |
| 91 | Simon Osindero, Max Welling, Geoffrey E. Hinton: Topographic Product Models Applied to Natural Scene Statistics. Neural Computation 18(2): 381-414 (2006) | |
| 90 | Geoffrey E. Hinton, Simon Osindero, Yee Whye Teh: A Fast Learning Algorithm for Deep Belief Nets. Neural Computation 18(7): 1527-1554 (2006) | |
| 2005 | ||
| 89 | Geoffrey E. Hinton: What kind of graphical model is the brain? IJCAI 2005: 1765- | |
| 88 | Geoffrey E. Hinton, Vinod Nair: Inferring Motor Programs from Images of Handwritten Digits. NIPS 2005 | |
| 87 | Roland Memisevic, Geoffrey E. Hinton: Improving dimensionality reduction with spectral gradient descent. Neural Networks 18(5-6): 702-710 (2005) | |
| 2004 | ||
| 86 | Max Welling, Michal Rosen-Zvi, Geoffrey E. Hinton: Exponential Family Harmoniums with an Application to Information Retrieval. NIPS 2004 | |
| 85 | Roland Memisevic, Geoffrey E. Hinton: Multiple Relational Embedding. NIPS 2004 | |
| 84 | Jacob Goldberger, Sam T. Roweis, Geoffrey E. Hinton, Ruslan Salakhutdinov: Neighbourhood Components Analysis. NIPS 2004 | |
| 83 | Brian Sallans, Geoffrey E. Hinton: Reinforcement Learning with Factored States and Actions. Journal of Machine Learning Research 5: 1063-1088 (2004) | |
| 2003 | ||
| 82 | Geoffrey E. Hinton, Max Welling, Andriy Mnih: Wormholes Improve Contrastive Divergence. NIPS 2003 | |
| 81 | Max Welling, Richard S. Zemel, Geoffrey E. Hinton: Efficient Parametric Projection Pursuit Density Estimation. UAI 2003: 575-582 | |
| 80 | Yee Whye Teh, Max Welling, Simon Osindero, Geoffrey E. Hinton: Energy-Based Models for Sparse Overcomplete Representations. Journal of Machine Learning Research 4: 1235-1260 (2003) | |
| 2002 | ||
| 79 | Sageev Oore, Demetri Terzopoulos, Geoffrey E. Hinton: A Desktop Input Device and Interface for Interactive 3D Character Animation. Graphics Interface 2002: 133-140 | |
| 78 | Max Welling, Geoffrey E. Hinton: A New Learning Algorithm for Mean Field Boltzmann Machines. ICANN 2002: 351-357 | |
| 77 | Max Welling, Geoffrey E. Hinton, Simon Osindero: Learning Sparse Topographic Representations with Products of Student-t Distributions. NIPS 2002: 1359-1366 | |
| 76 | Max Welling, Richard S. Zemel, Geoffrey E. Hinton: Self Supervised Boosting. NIPS 2002: 665-672 | |
| 75 | Geoffrey E. Hinton, Sam T. Roweis: Stochastic Neighbor Embedding. NIPS 2002: 833-840 | |
| 74 | Fiora Pirri, Geoffrey E. Hinton, Hector J. Levesque: In Memory of Ray Reiter (1939-2002). AI Magazine 23(4): 93 (2002) | |
| 73 | Sageev Oore, Demetri Terzopoulos, Geoffrey E. Hinton: Local Physical Models for Interactive Character Animation. Comput. Graph. Forum 21(3): (2002) | |
| 72 | Guy Mayraz, Geoffrey E. Hinton: Recognizing Handwritten Digits Using Hierarchical Products of Experts. IEEE Trans. Pattern Anal. Mach. Intell. 24(2): 189-197 (2002) | |
| 71 | Geoffrey E. Hinton: Training Products of Experts by Minimizing Contrastive Divergence. Neural Computation 14(8): 1771-1800 (2002) | |
| 2001 | ||
| 70 | Andrew D. Brown, Geoffrey E. Hinton: Relative Density Nets: A New Way to Combine Backpropagation with HMM's. NIPS 2001: 1149-1156 | |
| 69 | Alberto Paccanaro, Geoffrey E. Hinton: Learning Hierarchical Structures with Linear Relational Embedding. NIPS 2001: 857-864 | |
| 68 | Sam T. Roweis, Lawrence K. Saul, Geoffrey E. Hinton: Global Coordination of Local Linear Models. NIPS 2001: 889-896 | |
| 67 | Geoffrey E. Hinton, Yee Whye Teh: Discovering Multiple Constraints that are Frequently Approximately Satisfied. UAI 2001: 227-234 | |
| 66 | Alberto Paccanaro, Geoffrey E. Hinton: Learning Distributed Representations of Concepts Using Linear Relational Embedding. IEEE Trans. Knowl. Data Eng. 13(2): 232-244 (2001) | |
| 2000 | ||
| 65 | Geoffrey E. Hinton: Modeling High-Dimensional Data by Combining Simple Experts. AAAI/IAAI 2000: 1159-1164 | |
| 64 | Alberto Paccanaro, Geoffrey E. Hinton: Learning Distributed Representations by Mapping Concepts and Relations into a Linear Space. ICML 2000: 711-718 | |
| 63 | Alberto Paccanaro, Geoffrey E. Hinton: Extracting Distributed Representations of Concepts and Relations from Positive and Negative Propositions. IJCNN (2) 2000: 259-264 | |
| 62 | Brian Sallans, Geoffrey E. Hinton: Using Free Energies to Represent Q-values in a Multiagent Reinforcement Learning Task. NIPS 2000: 1075-1081 | |
| 61 | Yee Whye Teh, Geoffrey E. Hinton: Rate-coded Restricted Boltzmann Machines for Face Recognition. NIPS 2000: 908-914 | |
| 60 | Guy Mayraz, Geoffrey E. Hinton: Recognizing Hand-written Digits Using Hierarchical Products of Experts. NIPS 2000: 953-959 | |
| 59 | Zoubin Ghahramani, Geoffrey E. Hinton: Variational Learning for Switching State-Space Models. Neural Computation 12(4): 831-864 (2000) | |
| 58 | Naonori Ueda, Ryohei Nakano, Zoubin Ghahramani, Geoffrey E. Hinton: SMEM Algorithm for Mixture Models. Neural Computation 12(9): 2109-2128 (2000) | |
| 57 | Naonori Ueda, Ryohei Nakano, Zoubin Ghahramani, Geoffrey E. Hinton: Split and Merge EM Algorithm for Improving Gaussian Mixture Density Estimates. VLSI Signal Processing 26(1-2): 133-140 (2000) | |
| 1999 | ||
| 56 | Geoffrey E. Hinton, Andrew D. Brown: Spiking Boltzmann Machines. NIPS 1999: 122-128 | |
| 55 | Geoffrey E. Hinton, Zoubin Ghahramani, Yee Whye Teh: Learning to Parse Images. NIPS 1999: 463-469 | |
| 54 | Brendan J. Frey, Geoffrey E. Hinton: Variational Learning in Nonlinear Gaussian Belief Networks. Neural Computation 11(1): 193-213 (1999) | |
| 1998 | ||
| 53 | Naonori Ueda, Ryohei Nakano, Zoubin Ghahramani, Geoffrey E. Hinton: SMEM Algorithm for Mixture Models. NIPS 1998: 599-605 | |
| 52 | Radek Grzeszczuk, Demetri Terzopoulos, Geoffrey E. Hinton: Fast Neural Network Emulation of Dynamical Systems for Computer Animation. NIPS 1998: 882-888 | |
| 51 | Radek Grzeszczuk, Demetri Terzopoulos, Geoffrey E. Hinton: NeuroAnimator: Fast Neural Network Emulation and Control of Physics-based Models. SIGGRAPH 1998: 9-20 | |
| 50 | S. Sidney Fels, Geoffrey E. Hinton: Glove-TalkII-a neural-network interface which maps gestures to parallel formant speech synthesizer controls. IEEE Transactions on Neural Networks 9(1): 205-212 (1998) | |
| 1997 | ||
| 49 | Zoubin Ghahramani, Geoffrey E. Hinton: Hierarchical Non-linear Factor Analysis and Topographic Maps. NIPS 1997 | |
| 48 | Brendan J. Frey, Geoffrey E. Hinton: Efficient Stochastic Source Coding and an Application to a Bayesian Network Source Model. Comput. J. 40(2/3): 157-165 (1997) | |
| 47 | Christopher K. I. Williams, Michael Revow, Geoffrey E. Hinton: Instantiating Deformable Models with a Neural Net. Computer Vision and Image Understanding 68(1): 120-126 (1997) | |
| 46 | Peter Dayan, Geoffrey E. Hinton: Using Expectation-Maximization for Reinforcement Learning. Neural Computation 9(2): 271-278 (1997) | |
| 45 | Sageev Oore, Geoffrey E. Hinton, Gregory Dudek: A Mobile Robot that Learns its Place. Neural Computation 9(3): 683-699 (1997) | |
| 1996 | ||
| 44 | Brendan J. Frey, Geoffrey E. Hinton: Free Energy Coding. Data Compression Conference 1996: 73-81 | |
| 43 | Michael Revow, Christopher K. I. Williams, Geoffrey E. Hinton: Using Generative Models for Handwritten Digit Recognition. IEEE Trans. Pattern Anal. Mach. Intell. 18(6): 592-606 (1996) | |
| 42 | Peter Dayan, Geoffrey E. Hinton: Varieties of Helmholtz Machine. Neural Networks 9(8): 1385-1403 (1996) | |
| 1995 | ||
| 41 | Sidney Fels, Geoffrey E. Hinton: GloveTalkII: An Adaptive Gesture-to-Formant Interface. CHI 1995: 456-463 | |
| 40 | Geoffrey E. Hinton, Michael Revow: Using Pairs of Data-Points to Define Splits for Decision Trees. NIPS 1995: 507-513 | |
| 39 | Brendan J. Frey, Geoffrey E. Hinton, Peter Dayan: Does the Wake-sleep Algorithm Produce Good Density Estimators? NIPS 1995: 661-667 | |
| 38 | Peter Dayan, Geoffrey E. Hinton, Radford M. Neal, Richard S. Zemel: The Helmholtz machine. Neural Computation 7(5): 889-904 (1995) | |
| 1994 | ||
| 37 | Geoffrey E. Hinton, Michael Revow, Peter Dayan: Recognizing Handwritten Digits Using Mixtures of Linear Models. NIPS 1994: 1015-1022 | |
| 36 | Lei Xu, Michael I. Jordan, Geoffrey E. Hinton: An Alternative Model for Mixtures of Experts. NIPS 1994: 633-640 | |
| 35 | Sidney Fels, Geoffrey E. Hinton: Glove-TalkII: Mapping Hand Gestures to Speech Using Neural Networks. NIPS 1994: 843-850 | |
| 34 | Christopher K. I. Williams, Michael Revow, Geoffrey E. Hinton: Using a neural net to instantiate a deformable model. NIPS 1994: 965-972 | |
| 1993 | ||
| 33 | Geoffrey E. Hinton, Drew van Camp: Keeping the Neural Networks Simple by Minimizing the Description Length of the Weights. COLT 1993: 5-13 | |
| 32 | Richard S. Zemel, Geoffrey E. Hinton: Developing Population Codes by Minimizing Description Length. NIPS 1993: 11-18 | |
| 31 | Geoffrey E. Hinton, Richard S. Zemel: Autoencoders, Minimum Description Length and Helmholtz Free Energy. NIPS 1993: 3-10 | |
| 30 | Suzanna Becker, Geoffrey E. Hinton: Learning Mixture Models of Spatial Coherence. Neural Computation 5(2): 267-277 (1993) | |
| 1992 | ||
| 29 | Peter Dayan, Geoffrey E. Hinton: Feudal Reinforcement Learning. NIPS 1992: 271-278 | |
| 28 | Steven J. Nowlan, Geoffrey E. Hinton: Simplifying Neural Networks by Soft Weight-Sharing. Neural Computation 4(4): 473-493 (1992) | |
| 1991 | ||
| 27 | Suzanna Becker, Geoffrey E. Hinton: Learning to Make Coherent Predictions in Domains with Discontinuities. NIPS 1991: 372-379 | |
| 26 | Geoffrey E. Hinton, Christopher K. I. Williams, Michael Revow: Adaptive Elastic Models for Hand-Printed Character Recognition. NIPS 1991: 512-519 | |
| 25 | Steven J. Nowlan, Geoffrey E. Hinton: Adaptive Soft Weight Tying using Gaussian Mixtures. NIPS 1991: 993-1000 | |
| 1990 | ||
| 24 | Sidney Fels, Geoffrey E. Hinton: Building adaptive interfaces with neural networks: The glove-talk pilot study. INTERACT 1990: 683-688 | |
| 23 | Richard S. Zemel, Geoffrey E. Hinton: Discovering Viewpoint-Invariant Relationships That Characterize Objects. NIPS 1990: 299-305 | |
| 22 | Steven J. Nowlan, Geoffrey E. Hinton: Evaluation of Adaptive Mixtures of Competing Experts. NIPS 1990: 774-780 | |
| 21 | Geoffrey E. Hinton: Connectionist Symbol Processing - Preface. Artif. Intell. 46(1-2): 1-4 (1990) | |
| 20 | Geoffrey E. Hinton: Mapping Part-Whole Hierarchies into Connectionist Networks. Artif. Intell. 46(1-2): 47-75 (1990) | |
| 19 | Kevin J. Lang, Alex Waibel, Geoffrey E. Hinton: A time-delay neural network architecture for isolated word recognition. Neural Networks 3(1): 23-43 (1990) | |
| 1989 | ||
| 18 | Kevin J. Lang, Geoffrey E. Hinton: Dimensionality Reduction and Prior Knowledge in E-Set Recognition. NIPS 1989: 178-185 | |
| 17 | Richard S. Zemel, Michael Mozer, Geoffrey E. Hinton: TRAFFIC: Recognizing Objects Using Hierarchical Reference Frame Transformations. NIPS 1989: 266-273 | |
| 16 | Conrad C. Galland, Geoffrey E. Hinton: Discovering High Order Features with Mean Field Modules. NIPS 1989: 509-515 | |
| 15 | Geoffrey E. Hinton: Connectionist Learning Procedures. Artif. Intell. 40(1-3): 185-234 (1989) | |
| 1988 | ||
| 14 | Yann LeCun, Conrad C. Galland, Geoffrey E. Hinton: GEMINI: Gradient Estimation Through Matrix Inversion After Noise Injection. NIPS 1988: 141-148 | |
| 13 | David S. Touretzky, Geoffrey E. Hinton: A Distributed Connectionist Production System. Cognitive Science 12(3): 423-466 (1988) | |
| 1987 | ||
| 12 | Geoffrey E. Hinton, James L. McClelland: Learning Representations by Recirculation. NIPS 1987: 358-366 | |
| 11 | Geoffrey E. Hinton: Learning Translation Invariant Recognition in Massively Parallel Networks. PARLE (1) 1987: 1-13 | |
| 10 | Scott E. Fahlman, Geoffrey E. Hinton: Connectionist Architectures for Artificial Intelligence. IEEE Computer 20(1): 100-109 (1987) | |
| 1986 | ||
| 9 | Drew V. McDermott, Geoffrey E. Hinton: Learning in Massively Parallel Nets (Panel). AAAI 1986: 1149 | |
| 1985 | ||
| 8 | David S. Touretzky, Geoffrey E. Hinton: Symbols Among the Neurons: Details of a Connectionist Inference Architecture. IJCAI 1985: 238-243 | |
| 7 | Geoffrey E. Hinton, Kevin J. Lang: Shape Recognition and Illusory Conjunctions. IJCAI 1985: 252-259 | |
| 6 | David H. Ackley, Geoffrey E. Hinton, Terrence J. Sejnowski: A Learning Algorithm for Boltzmann Machines. Cognitive Science 9(1): 147-169 (1985) | |
| 1983 | ||
| 5 | Scott E. Fahlman, Geoffrey E. Hinton, Terrence J. Sejnowski: Massively Parallel Architectures for AI: NETL, Thistle, and Boltzmann Machines. AAAI 1983: 109-113 | |
| 1981 | ||
| 4 | Geoffrey E. Hinton: Shape Representation in Parallel Systems. IJCAI 1981: 1088-1096 | |
| 3 | Geoffrey E. Hinton: A Parallel Computation that Assigns Canonical Object-Based Frames of Reference. IJCAI 1981: 683-685 | |
| 1978 | ||
| 2 | Aaron Sloman, David Owen, Geoffrey E. Hinton, Frank Birch, Frank O'Gorman: Representation and Control in Vision. AISB/GI (ECAI) 1978: 309-314 | |
| 1976 | ||
| 1 | Geoffrey E. Hinton: Using Relaxation to find a Puppet. AISB (ECAI) 1976: 148-157 | |