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Time series
Seasonal adjustment
Scientific modelling
Autoregressive model
Forecasting
Economic model
Autoregressive–moving-average model
Time series analysis
Statistics
Noise

Unobserved Components Time Series Models: Analysis, Modelling and Prediction ... introducing STAMP 7 Siem Jan Koopman and Andrew Harvey

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