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1 Time Series Forecasting: The Case for the Single Source of Error State Space Model J. Keith Ord, Georgetown University Ralph D. Snyder, Monash University.

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Presentation on theme: "1 Time Series Forecasting: The Case for the Single Source of Error State Space Model J. Keith Ord, Georgetown University Ralph D. Snyder, Monash University."— Presentation transcript:

1 1 Time Series Forecasting: The Case for the Single Source of Error State Space Model J. Keith Ord, Georgetown University Ralph D. Snyder, Monash University Anne B. Koehler, Miami University Rob J. Hyndman, Monash University Mark Leeds, The Kellogg Group http://www.buseco.monash.edu.au/depts/ebs/pubs/wpapers/2005

2 2 Outline of Talk Background General SSOE model –Linear and nonlinear examples –Estimation and model selection General linear state space model –MSOE and SSOE forms –Parameter spaces –Convergence –Equivalent Models –Explanatory variables –ARCH and GARCH models Advantages of SSOE

3 3 Review Paper A New Look At Models for Exponential Smoothing (2001). JRSS, series D [The Statistician], 50, 147- 59. Chris Chatfield, Anne Koehler, Keith Ord &Ralph Snyder

4 4 Framework Paper A State Space Framework for Automatic Forecasting Using Exponential Smoothing(2002) International J. of Forecasting, 18, 439-454 Rob Hyndman, Anne Koehler, Ralph Snyder & Simone Grosse

5 5 Some background The Kalman filter: Kalman (1960), Kalman & Bucy (1961) Engineering: Jazwinski (1970), Anderson & Moore (1979) Regression approach: Duncan and Horn (JASA, 1972) Bayesian Forecasting & Dynamic Linear Model: Harrison & Stevens (1976, JRSS B); West & Harrison (1997) Structural models: Harvey (1989) State Space Methods: Durbin & Koopman (2001)

6 6 Single Source of Error (SSOE) State Space Model Developed by Snyder (1985) among others Also known as the Innovations Representation Any Gaussian time series has an innovations representation [SSOE looks restrictive but it is not!]

7 7 Why a structural model? Structural models enable us to formulate model in terms of unobserved components and to decompose the model in terms of those components Structural models will enable us to formulate schemes with non-linear error structures, yet familiar forecast functions

8 8 General Framework: Notation

9 9 Single Source of Error (SSOE) State Space Model

10 10 Simple Exponential Smoothing (SES)

11 11 Another Form for State Equation

12 12 Reduced ARIMA Form ARIMA(0,1,1):

13 13 Another SES Model

14 14 Same State Equation for Second Model

15 15 Reduced ARIMA Model for Second SES Model NONE

16 16 Point Forecasts for Both Models

17 17 SSOE Model for Holt-Winters Method

18 18 Likelihood, Exponential Smoothing, and Estimation

19 19 Model Selection p is the number of free states plus the number of parameters

20 20 General Linear State Space Model

21 21 Special Cases

22 22 Linear SSOE Model

23 23 SSOE for Holt’s Linear Trend Exponential Smoothing

24 24 MSOE Model for Holt’s Liner Trend Exponential Smoothing

25 25 Parameter Space 1 Both correspond to the same ARIMA model in the steady state BUT parameter spaces differ –SSOE has same space as ARIMA –MSOE space is subset of ARIMA Example: for ARIMA (0,1,1),  = 1-  –MSOE has 0 <  < 1 –SSOE has 0 <  <2 equivalent to –1 <  < 1

26 26 Parameter space 2 In general, ρ = 1 (SSOE) yields the same parameter space as ARIMA, ρ = 0 (MSOE) yields a smaller space. No other value of ρ yields a larger parameter space than does ρ = 1 [Theorems 5.1 and 5.2] Restricted parameter spaces may lead to poor model choices [e.g. Morley et al., 2002]

27 27 Convergence of the Covariance Matrix for Linear SSOE

28 28 Convergence 2 The practical import of this result is that, provided t is not too small, we can approximate the state variable by its estimate That is, heuristic forecasting procedures, such as exponential smoothing, that generate forecast updates in a form like the state equations, are validated.

29 29 Equivalence Equivalent linear state space models (West and Harrison) will give rise to the same forecast distribution. For the MSOE model the equivalence transformation H of the state vector typically produces a non-diagonal covariance matrix. For the SSOE model the equivalence transformation H preserves the perfect correlation of the state vectors.

30 30 Explanatory Variables

31 31 ARCH Effects

32 32 Advantages of SSOE Models Mapping from model to forecasting equations is direct and easy to see ML estimation can be applied directly without need for the Kalman updating procedure Nonlinear models are readily incorporated into the model framework

33 33 Further Advantages of SSOE Models Akaike and Schwarz information criteria can be used to choose models, including choices among models with different numbers of unit roots in the reduced form Largest parameter space among state space models. In Kalman filter, the covariance matrix of the state vector converges to 0.


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