Forecasting with exponential smoothing. The state space approach

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Publication:925094

zbMath1211.62165MaRDI QIDQ925094

J. Keith Ord, Anne B. Koehler, Ralph D. Snyder, Rob Hyndman

Publication date: 29 May 2008

Published in: Springer Series in Statistics (Search for Journal in Brave)




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