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Dive into the research topics where Simon Osindero is active.

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Featured researches published by Simon Osindero.


Neural Computation | 2006

A fast learning algorithm for deep belief nets

Geoffrey E. Hinton; Simon Osindero; Yee Whye Teh

We show how to use complementary priors to eliminate the explaining-away effects that make inference difficult in densely connected belief nets that have many hidden layers. Using complementary priors, we derive a fast, greedy algorithm that can learn deep, directed belief networks one layer at a time, provided the top two layers form an undirected associative memory. The fast, greedy algorithm is used to initialize a slower learning procedure that fine-tunes the weights using a contrastive version of the wake-sleep algorithm. After fine-tuning, a network with three hidden layers forms a very good generative model of the joint distribution of handwritten digit images and their labels. This generative model gives better digit classification than the best discriminative learning algorithms. The low-dimensional manifolds on which the digits lie are modeled by long ravines in the free-energy landscape of the top-level associative memory, and it is easy to explore these ravines by using the directed connections to display what the associative memory has in mind.


Neural Computation | 2006

Topographic Product Models Applied to Natural Scene Statistics

Simon Osindero; Max Welling; Geoffrey E. Hinton

We present an energy-based model that uses a product of generalized Student-t distributions to capture the statistical structure in data sets. This model is inspired by and particularly applicable to natural data sets such as images. We begin by providing the mathematical framework, where we discuss complete and overcomplete models and provide algorithms for training these models from data. Using patches of natural scenes, we demonstrate that our approach represents a viable alternative to independent component analysis as an interpretive model of biological visual systems. Although the two approaches are similar in flavor, there are also important differences, particularly when the representations are overcomplete. By constraining the interactions within our model, we are also able to study the topographic organization of Gabor-like receptive fields that our model learns. Finally, we discuss the relation of our new approach to previous workin particular, gaussian scale mixture models and variants of independent components analysis.


international conference on machine learning | 2006

Combining discriminative features to infer complex trajectories

David A. Ross; Simon Osindero; Richard S. Zemel

We propose a new model for the probabilistic estimation of continuous state variables from a sequence of observations, such as tracking the position of an object in video. This mapping is modeled as a product of dynamics experts (features relating the state at adjacent time-steps) and observation experts (features relating the state to the image sequence). Individual features are flexible in that they can switch on or off at each time-step depending on their inferred relevance (or on additional side information), and discriminative in that they need not model the full generative likelihood of the data. When trained conditionally, this permits the inclusion of a broad range of rich features (for example, features relying on observations from multiple time-steps), and allows the relevance of features to be learned from labeled sequences.


neural information processing systems | 2002

Learning Sparse Topographic Representations with Products of Student-t Distributions

Max Welling; Simon Osindero; Geoffrey E. Hinton


Journal of Machine Learning Research | 2003

Energy-based models for sparse overcomplete representations

Yee Whye Teh; Max Welling; Simon Osindero; Geoffrey E. Hinton


neural information processing systems | 2007

Modeling image patches with a directed hierarchy of Markov random fields

Simon Osindero; Geoffrey E. Hinton


neural information processing systems | 2005

An Alternative Infinite Mixture Of Gaussian Process Experts

Edward Meeds; Simon Osindero


Cognitive Science | 2006

Unsupervised Discovery of Nonlinear Structure Using Contrastive Backpropagation.

Geoffrey E. Hinton; Simon Osindero; Max Welling; Yee Whye Teh


international conference on machine learning | 2017

FeUdal Networks for Hierarchical Reinforcement Learning

Alexander Sasha Vezhnevets; Simon Osindero; Tom Schaul; Nicolas Heess; Max Jaderberg; David Silver; Koray Kavukcuoglu


arXiv: Learning | 2017

Population Based Training of Neural Networks.

Max Jaderberg; Valentin Dalibard; Simon Osindero; Wojciech Marian Czarnecki; Jeff Donahue; Ali Razavi; Oriol Vinyals; Tim Green; Iain Dunning; Karen Simonyan; Chrisantha Fernando; Koray Kavukcuoglu

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Max Welling

University of Amsterdam

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Oriol Vinyals

University of California

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