Remote effects spatial process models for modeling teleconnections

  title={Remote effects spatial process models for modeling teleconnections},
  author={J. Hewitt and J. Hoeting and James Done and Erin L. Towler},
  journal={arXiv: Methodology},
  • J. Hewitt, J. Hoeting, +1 author Erin L. Towler
  • Published 2016
  • Computer Science, Mathematics
  • arXiv: Methodology
  • While most spatial data can be modeled with the assumption that distant points are uncorrelated, some problems require dependence at both far and short distances. We introduce a model to directly incorporate dependence in phenomena that influence a distant response. Spatial climate problems often have such modeling needs as data are influenced by local factors in addition to remote phenomena, known as teleconnections. Teleconnections arise from complex interactions between the atmosphere and… CONTINUE READING
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