Sparse, Sequential Bayesian Geostatistics

نویسندگان

  • Dan Cornford
  • Lehel Csato
  • Manfred Opper
چکیده

Biography Dr. Dan Cornford is a lecture in Computer Science and works in the Neural Computing Research Group at Aston University. Research interests are in the field of spatial statistics, space-time modelling and data assimilation. Lehel Csato is a post-doc in the same group working on an EPSRC grant (GR/R61857/01) looking at applying sparse sequential Gaussian processes to data assimilation. Manfred Opper is a Reader in the same group, with research interests in statistical physics, sequential learning and Bayesian learning.

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تاریخ انتشار 2003