Identifying the finite dimensionality of curve time series

Annals of Statistics - Tập 38 Số 6 - 2010
Neil Bathia1, Qiwei Yao1, Flávio Augusto Ziegelmann1
1London School of Economics, London School of Economics and Federal University of Rio Grande do Sul

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