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Bluegrass DaVinci Fellowship - Education Through Scientific Leisure

Bluegrass DaVinci Fellowship
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people

Computers, Artificial Intelligence, Neural Networks, People



    Top: Computers: Artificial_Intelligence: Neural_Networks: People:


See Also:

  • - Supervised and unsupervised learning, cross-modal learning.
  • - Learning and inference in complex probabilistic models.
  • - Gesture recognition, Gaussian Process priors, control systems, probabilistic intelligent interfaces.
  • - Research papers and information on biologically inspired neural networks, brain modelling, AI and related topics. A cross-disciplinary site mixing information from physics, neuroscience, cognitive science and other fields.
  • - Graphical models, variational Bayes, independent factor analysis.
  • - Inference in graphical models, mean field and variational approaches.
  • - Bayesian inference, variational methods, graphical models.
  • - Brain Computer Interface.
  • - Statistical learning, machine learning approaches to computational biology, pattern recognition and control.
  • - Bayesian learning, relevance vector machine, probabilistic principal component analysis.
  • - Machine learning for medical diagnosis and biological data analysis.
  • - Data structures for computational intelligence.
  • - Reinforcement learning and conditioning, mathematical models of neural processing.
  • - An artrificial intelligence researcher who is an expert on neural networks.
  • - Speech processing, auditory scene analysis, machine learning.
  • - Graphical models, learning in high dimensions, tree networks.
  • - Machine learning of dynamic data, graphical models and Bayesian networks, neural networks.
  • - Learning and generalization in neural networks.
  • - Biomedical data mining, diagnostic rule extraction and quality control in industry using a variety of techniques.
  • - Reinforcement learning, probabilistic reasoning, machine learning, spoken dialogue systems.
  • - Visual perception with neural networks.
  • - Pattern recognition and statistical modelling for object recognition.
  • - Neural Networks, Spiking Neural Nets, Retinotopic Visual Architectures.
  • - Intelligent information systems, physiological sciences systems.
  • - Artificial intelligence, generative topographic map, missing data.
  • - Reinforcement learning.
  • - Statistical machine learning, text and natural language processing, information retrieval, information theory.
  • - Face recognition, Invariances in learning and vision.
  • - Computer vision, probabilistic models for image sequences, invariant features.
  • - Probabilistic graphical modeling, statistical learning theory, pattern recognition, prediction, and causality.
  • - Machine learning, pattern recognition, neural networks, voice processing, auditory computation.
  • - Physics of disordered systems. Working on dynamic replica theory for recurrent neural networks.
  • - Bayesian perception, computer vision, image processing.
  • - Learning and memory in the brain, hippocampus.
  • - Probabilistic models, variational methods.
  • - Theoretical neurophysiologist and author of The Cerebral Code, How Brains Think.
  • - Bayesian theory and inference, error-correcting codes, machine learning.
  • - Theory of computation, computation in spiking neurons.
  • - Machine learning approaches to data mining focussing on text mining applications.
  • - Unsupervised learning, probabilistic density estimation, machine vision.
  • - Variational algorithms for Gaussian processes, neural networks and support vector machines. Also work on belief propagation and protein structure prediction.
  • - Neural computing, data mining, evolutionary computing, ensemble networks.
  • - Probabilistic models for complex uncertain domains.
  • - Statistical analysis of neural data, experimental design in neuroscience.
  • - Decision making under uncertainty, reinforcement learning, unsupervised learning.
  • - Machine learning, computer vision, Bayesian methods.
  • - Computer vision, computational olfaction.
  • - Computer vision, model-based object recognition, face recognition.
  • - Many aspects of probabilistic modelling, identity uncertainty, expressive probability models.
  • - Graphical models, variational methods, kernel methods.
  • - Constructive learning, computational learning theory, spatial learning, cognitive modelling, incremental learning.
  • - Bayesian inference, Markov chain Monte Carlo simulation, machine learning.
  • - Sensorimotor control, unsupervised learning, probabilistic machine learning.
  • - Statistical physics, information theory and applied probability and applications to machien learning and complex systems.
  • - Non-linear neural dynamics, visual segmentation, sensory processing.
  • - Statistical signal and image processing, natural image modelling, graphical models.
  • - Neurally controlled robotics.
  • - Computational learning theory, discrete mathematics.
  • - Computational motor control, biologically realistic circuits, humanoid robots, spiking neurons.
  • - Gaussian processes, non-linear Bayesian inference, evaluation and comparison of network models.
  • - Machine learning, kernel methods, kernel independent component analysis and graphical models
  • - Vision, Bayesian methods, neural computation.
  • - Overview of neural networks, and explanation of Java classes that implement backpropagation, and Kohonen feature maps.
  • - Reinforcement Learning, Adaptive Critic Designs, Control, Optimization, Graph Theory, Bioinformatics, Intrusion Detection.
  • - Neural networks and nonlinear modelling for process engineering.
  • - Graphical models, machine learning, reinforcement learning.
  • - Reinforcement learning, machine learning, supervised learning.
  • - Decision making and planning under uncertainty, reinforcement learning, game theory and economic models.
  • - Unsupervised learning with rich sensory input. Most noted for being a co-inventor of back-propagation.
  • - Research on Machine Learning/Neural Networks/Clustering. Applications to DNA microarray data analysis/industrial automation/information retrieval. Teaching activities.
  • - Representation and learning in neural processing systems, unsupervised learning, reinforcement learning.
  • - Neural networks and VLSI hardware.
  • - Unsupervised learning, PCA, ICA, SOM, statistical pattern recognition, image and signal analysis.
  • - Visual coding, statistics of images, independent components analysis.
  • - Stochastic generative models for complex visual phenomena.
  • - Neural networks, machine learning, acoustic source separation and localisation, independent component analysis, brain imaging.
  • - Sensory representation in visual cortex, memory representation and adaptive organization of visuo-motor transformations.
  • - Graphical models, variational methods, machine learning, reasoning under uncertainty.
  • - Unsupervised learning, machine learning, computational models of neural processing.
  • - Machine learning and explorative data analysis: support vector machines, kernel principal component analysis and kernel Fisher discriminant analysis.
  • - Graphical models, variational methods, pattern recognition.
  • - Belief networks, dynamic trees, image models, image processing, probabilistic methods in astronomy, scientific data mining, Gaussian processes and Hopfield neural networks.
  • - Evolvable neural network models, neural networks for programmable hardware, large neural networks.
  • - Graphical models, belief propagation.
  • - Machine learning, text and information retrieval and extraction, reinforcement learning.
  • - Computer vision, image analysis, neural networks.
  • - Learning of probabilistic models, applications to computational biology.
  • - Online learning, machine learning, learning dynamics.
  • - Intermediate level structure in vision.
  • - Iterative decoding, unsupervised learning, graphical models.
  • - Object recognition, cognitive neuroscience, interaction between vision and motor movements.
  • - Bayesian inference, Markov chain Monte Carlo methods, evaluation of learning methods, data compression.
  • - Torch machine learning library, including SVMTorch support vector machine program. Research on mixture models, hidden markov models, multimodal fusion, speaker verification.
  • - Kernel methods for prediction and data analysis.
  • - Machine learning and medical data analysis, independent component analysis and information theory.
  • - Particle filtering and Monte Carlo Markov Chain methods.
  • - Face recognition.
  • - Neural networks applied to visual perception and computational modeling of mental disorders.
  • - Statistical methods for inference and learning.
  • - Information dissemination and retrieval, machine learning and neural networks.
  • - Models of human and computer vision.
  • - Learning distributed representation of concepts from relational data.
  • - Gaussian processes, image interpretation, graphical models, pattern recognition.
  • - Visual perception, machine vision, image processing.
  • - Neural computing, error-correcting codes and cryptography using statistical and statistical mechanics techniques.
  • - Vision and graphics, statistical modelling and computing, neural computation.
  • - Computational neuroscience, neural network modelling.
  • - Short-term memory, learning and memory in the brain, computational learning theory.
  • - Automated Analysis of ECG.
  • - Handwritten recognition, convolutional networks, image compression. Noted for LeNet.
  • - Hybrid and Bayesian networks.
  • - Reinforcement learning, machine learning.
  • - Neural networks for sensor fusion, wireless sensor networks, software modeling, multimedia assets management architectures
  • - Computational learning, complex probability modelling.
  • - Somatosensory working memory, computation with action potentials, design of complex stimuli for sensory neurophysiology.
  • - Image analysis with unsupervised learning, face recognition, facial expression analysis.
  • - Boltzmann machines, computational neurobiology, online learning.
  • - Neural network learning, information geometry.
  • - Machine learning and generalization.
  • - Multitask learning.
  • - Machine learning and probabilistic graphical models for computer vision and computational molecular biology.
  • - Hand-written character recognition.
  • - Machine learning; applications to human-computer interaction, vision,neurophysiology, biology and cognitive science.
  • - Neural network models of learning and memory, computational neuroscience, unsupervised learning in perceptual systems.
  • - Partially observable markov decision processes (POMDP), reinforcement learning, multi-agent systems.
  • - Neural networks, collective behaviour of systems of simple processors. Most noted for Hopfield networks.
  • - Artificial intelligence, machine learning, data mining.
  • - Statistical learning theory, support vector machines and kernel methods.



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