Estimation of Parameterized Spatio-Temporal Dynamic Models

@article{Xu2007EstimationOP,
  title={Estimation of Parameterized Spatio-Temporal Dynamic Models},
  author={Ke Xu and Christopher K. Wikle},
  journal={Journal of Statistical Planning and Inference},
  year={2007},
  volume={137},
  pages={567-588}
}
  • Ke Xu, C. Wikle
  • Published 1 February 2007
  • Computer Science
  • Journal of Statistical Planning and Inference

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