Remi Barillec
Aston University
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Publication
Featured researches published by Remi Barillec.
signal processing systems | 2010
Yuan Shen; Cédric Archambeau; Dan Cornford; Manfred Opper; John Shawe-Taylor; Remi Barillec
In recent work we have developed a novel variational inference method for partially observed systems governed by stochastic differential equations. In this paper we provide a comparison of the Variational Gaussian Process Smoother with an exact solution computed using a Hybrid Monte Carlo approach to path sampling, applied to a stochastic double well potential model. It is demonstrated that the variational smoother provides us a very accurate estimate of mean path while conditional variance is slightly underestimated. We conclude with some remarks as to the advantages and disadvantages of the variational smoother.
Computers & Geosciences | 2011
Remi Barillec; Ben Ingram; Dan Cornford; Lehel Csató
Heterogeneous datasets arise naturally in most applications due to the use of a variety of sensors and measuring platforms. Such datasets can be heterogeneous in terms of the error characteristics and sensor models. Treating such data is most naturally accomplished using a Bayesian or model-based geostatistical approach; however, such methods generally scale rather badly with the size of dataset, and require computationally expensive Monte Carlo based inference. Recently within the machine learning and spatial statistics communities many papers have explored the potential of reduced rank representations of the covariance matrix, often referred to as projected or fixed rank approaches. In such methods the covariance function of the posterior process is represented by a reduced rank approximation which is chosen such that there is minimal information loss. In this paper a sequential Bayesian framework for inference in such projected processes is presented. The observations are considered one at a time which avoids the need for high dimensional integrals typically required in a Bayesian approach. A C++ library, gptk, which is part of the INTAMAP web service, is introduced which implements projected, sequential estimation and adds several novel features. In particular the library includes the ability to use a generic observation operator, or sensor model, to permit data fusion. It is also possible to cope with a range of observation error characteristics, including non-Gaussian observation errors. Inference for the covariance parameters is explored, including the impact of the projected process approximation on likelihood profiles. We illustrate the projected sequential method in application to synthetic and real datasets. Limitations and extensions are discussed.
international conference on machine learning | 2012
Alexis Boukouvalas; Remi Barillec; Dan Cornford
Advances in Water Resources | 2009
Remi Barillec; Dan Cornford
international workshop on machine learning for signal processing | 2007
Yuan Shen; Cédric Archambeau; Dan Cornford; Manfred Opper; John Shawe-Taylor; Remi Barillec
Archive | 2008
Remi Barillec
Archive | 2009
Ben Ingham; Dan Cornford; Remi Barillec
Archive | 2010
Dan Cornford; Remi Barillec
Archive | 2009
Remi Barillec; Alexios Boukouvalas; Dan Cornford
Archive | 2009
Jorge de Jesus; Remi Barillec; Grégoire Dubois; Dan Cornford