Decomposition of discrete time periodically correlated and multivariate stationary symmetric stable processes

@article{Soltani2005DecompositionOD,
  title={Decomposition of discrete time periodically correlated and multivariate stationary symmetric stable processes},
  author={Ahmad Reza Soltani and Afshin Parvardeh},
  journal={Stochastic Processes and their Applications},
  year={2005},
  volume={115},
  pages={1838-1859}
}
5 Citations
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