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Top > Computers > Artificial Intelligence > Neural Networks > People
See also:

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» Agakov, Felix - Probabilistic graphical modeling, statistical learning theory, pattern recognition, prediction, and causality.
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» Allan, Moray - Computer vision, probabilistic models for image sequences, invariant features.
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» Attias, Hagai - Graphical models, variational Bayes, independent factor analysis.
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» Bach, Francis - Machine learning, kernel methods, kernel independent component analysis and graphical models
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» Beal, Matthew J. - Bayesian inference, variational methods, graphical models, nonparametric Bayes.
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» Becker, Sue - Neural network models of learning and memory, computational neuroscience, unsupervised learning in perceptual systems.
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» Bengio, Samy - Torch machine learning library, including SVMTorch support vector machine program. Research on mixture models, hidden markov models, multimodal fusion, speaker verification.
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» Beveridge, Ross - Computer vision, model-based object recognition, face recognition.
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» Bishop, Chris - Graphical models, variational methods, pattern recognition.
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» Boutilier, Craig - Decision making and planning under uncertainty, reinforcement learning, game theory and economic models.
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» Brody, Carlos D. - Somatosensory working memory, computation with action potentials, design of complex stimuli for sensory neurophysiology.
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» Brown, Andrew - Machine learning of dynamic data, graphical models and Bayesian networks, neural networks.
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» Bulsari, A. - Neural networks and nonlinear modelling for process engineering.
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» Calvin, William H. - Theoretical neurophysiologist and author of The Cerebral Code, How Brains Think.
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» Cheung, Vincent - Machine learning and probabilistic graphical models for computer vision and computational molecular biology.
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» Chu, Selina - Artificial intelligence, machine learning, data mining.
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» Coolen, Ton - Physics of disordered systems. Working on dynamic replica theory for recurrent neural networks.
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» Dahlem, Markus A. - Neural network models of visual cortex to model neurological symptoms of migraine.
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» Dayan , Peter - Representation and learning in neural processing systems, unsupervised learning, reinforcement learning.
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» de Freitas, Nando - Bayesian inference, Markov chain Monte Carlo simulation, machine learning.
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» de Garis, Hugo - Evolvable neural network models, neural networks for programmable hardware, large neural networks.
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» De vito, Saverio - Neural networks for sensor fusion, wireless sensor networks, software modeling, multimedia assets management architectures
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» De Wilde, Philippe - Brain inspired models of uncertainty, linguistic and fuzzy uncertainty, uncertainty in dynamic multi-user environments.
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» Dr Hooman Shadnia - Dedicated to artificial neural networks and their applications in medical research and computational chemistry. Offers a quick tutorial on theory on ANNs written in Persian.
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» Frey, Brendan J. - Iterative decoding, unsupervised learning, graphical models.
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» Friedman, Nir - Learning of probabilistic models, applications to computational biology.
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» Frohlich, Jochen - Overview of neural networks, and explanation of Java classes that implement backpropagation, and Kohonen feature maps.
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» Ghahramani, Zoubin - Sensorimotor control, unsupervised learning, probabilistic machine learning.
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» Hansen, Lars Kai - Neural network ensembles, adaptive systems and applications in neuroinformatics.
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» Herbrich, Ralph - Statistical learning theory, support vector machines and kernel methods.
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» Heskes, Tom - Learning and generalization in neural networks.
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» Hinton, Geoffrey E. - Unsupervised learning with rich sensory input. Most noted for being a co-inventor of back-propagation.
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» Honavar, Vasant - Constructive learning, computational learning theory, spatial learning, cognitive modelling, incremental learning.
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» Jordan, Michael I. - Graphical models, variational methods, machine learning, reasoning under uncertainty.
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» Joshi, Prashant - Computational motor control, biologically realistic circuits, humanoid robots, spiking neurons.
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» Kearns, Michael - Reinforcement learning, probabilistic reasoning, machine learning, spoken dialogue systems.
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» Koller, Daphne - Probabilistic models for complex uncertain domains.
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» Lafferty, John D. - Statistical machine learning, text and natural language processing, information retrieval, information theory.
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» Lawrence, Steve - Information dissemination and retrieval, machine learning and neural networks.
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» LeCun, Yann - Handwritten recognition, convolutional networks, image compression. Noted for LeNet.
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» Leen, Todd - Online learning, machine learning, learning dynamics.
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» Li, Zhaoping - Non-linear neural dynamics, visual segmentation, sensory processing.
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» MacKay, David - Bayesian theory and inference, error-correcting codes, machine learning.
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» McCallum, Andrew - Machine learning, text and information retrieval and extraction, reinforcement learning.
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» Meila, Marina - Graphical models, learning in high dimensions, tree networks.
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» Muresan, Raul C. - Neural Networks, Spiking Neural Nets, Retinotopic Visual Architectures.
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» Murphy, Kevin P. - Graphical models, machine learning, reinforcement learning.
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» Murray-Smith, Roderick - Gesture recognition, Gaussian Process priors, control systems, probabilistic intelligent interfaces.
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» Neal, Radford - Bayesian inference, Markov chain Monte Carlo methods, evaluation of learning methods, data compression.
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» Oja, Erkki - Unsupervised learning, PCA, ICA, SOM, statistical pattern recognition, image and signal analysis.
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» Olier, Ivan - Artificial intelligence, generative topographic map, missing data.
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» Olshausen, Bruno - Visual coding, statistics of images, independent components analysis.
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» Opper, Manfred - Statistical physics, information theory and applied probability and applications to machine learning and complex systems.
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» Paccanaro, Alberto - Learning distributed representation of concepts from relational data.
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» Pearlmutter, Barak - Neural networks, machine learning, acoustic source separation and localisation, independent component analysis, brain imaging.
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» Prashant, Joshi - Computational neuroscientist, with main areas of research interest being computational motor control, computational models of olfaction, computation with spiking neurons, neurocomputational basis of working memory and decision making, learning in biologically realistic circuits.
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» Rasmussen, Carl Edward - Gaussian processes, non-linear Bayesian inference, evaluation and comparison of network models.
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» Roberts, Stephen - Machine learning and medical data analysis, independent component analysis and information theory.
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» Rovetta, Stefano - Research on Machine Learning/Neural Networks/Clustering. Applications to DNA microarray data analysis/industrial automation/information retrieval. Teaching activities.
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» Roweis, Sam T. - Speech processing, auditory scene analysis, machine learning.
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» Russell, Stuart - Many aspects of probabilistic modelling, identity uncertainty, expressive probability models.
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» Saad, David - Neural computing, error-correcting codes and cryptography using statistical and statistical mechanics techniques.
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» Sahani, Maneesh - Statistical analysis of neural data, experimental design in neuroscience.
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» Sallans, Brian - Decision making under uncertainty, reinforcement learning, unsupervised learning.
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» Saul, Lawrence K. - Machine learning, pattern recognition, neural networks, voice processing, auditory computation.
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» Saund, Eric - Intermediate level structure in vision.
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» Schein, Andrew I. - Machine learning approaches to data mining focussing on text mining applications.
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» Sejnowski, Terry - Sensory representation in visual cortex, memory representation and adaptive organization of visuo-motor transformations.
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» Seung, Sebastian - Short-term memory, learning and memory in the brain, computational learning theory.
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» Storkey, Amos - Belief networks, dynamic trees, image models, image processing, probabilistic methods in astronomy, scientific data mining, Gaussian processes and Hopfield neural networks.
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» Teh, Yee Whye - Learning and inference in complex probabilistic models.
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» Tipping, Mike - Varied machine learning and data analysis topics, including Bayesian inference, relevance vector machine, probabilistic principal component analysis and visualisation methods.
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» Tishby, Naftali - Machine learning; applications to human-computer interaction, vision,neurophysiology, biology and cognitive science.
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» Versace, Massimiliano - Neural networks applied to visual perception and computational modeling of mental disorders.
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» Wainwright, Martin - Statistical signal and image processing, natural image modelling, graphical models.
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» Wallis, Guy - Object recognition, cognitive neuroscience, interaction between vision and motor movements.
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» Weiss, Yair - Vision, Bayesian methods, neural computation.
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» Welling, Max - Unsupervised learning, probabilistic density estimation, machine vision.
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» Wiegerinck, Wim - Inference in graphical models, mean field and variational approaches.
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» Winther, Ole - Variational algorithms for Gaussian processes, neural networks and support vector machines. Also work on belief propagation and protein structure prediction.
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» Wu, Yingnian - Stochastic generative models for complex visual phenomena.
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» Xing, Eric - Statistical learning, machine learning approaches to computational biology, pattern recognition and control.
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» Zemel, Richard - Unsupervised learning, machine learning, computational models of neural processing.
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» Zhou, Zhi-Hua - Neural computing, data mining, evolutionary computing, ensemble networks.
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The content of this directory is based on the Open Directory and may have been modified by clixShare
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