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Time Series Model Estimation

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Time Series Model Estimation Materials for this lecture Read Chapter 15 pages 30 to 37 Lecture 7 Time Series.XLS Lecture 7 Vector Autoregression.XLS – PowerPoint PPT presentation

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Title: Time Series Model Estimation


1
Time Series Model Estimation
  • Materials for this lecture
  • Read Chapter 15 pages 30 to 37
  • Lecture 7 Time Series.XLS
  • Lecture 7 Vector Autoregression.XLS

2
Time Series Model Estimation
  • Outline for this lecture
  • Review the first times series lecture
  • Discuss model estimation
  • Demonstrate how to estimate Time Series (AR)
    models with Simetar
  • Interpretation of model results
  • How you forecast the results for an AR model

3
Time Series Model Estimation
  • Plot the data to see what kind of series you are
    analyzing
  • Make the series stationary by determining the
    optimal number of diferences based on DF() test,
    say Di,t
  • Determine the number of lags to use in the AR
    model based on
  • AUTOCORR(), say
    Di,t a b1 Di,t-1 b2 Di,t-2 b3 Di,t-3 b4
    Di,t-4
  • Create all of the data lags and estimate the
    model using OLS

4
Time Series Model Estimation
  • An alternative to estimating the differences and
    lag variables by hand and using a regression
    package, use Simetar
  • Simetar time series
    function is driven by
    a menu

Lecture 6
5
Time Series Model Estimation
  • Read the results like a regression
  • Beta coefficients are provided like OLS
  • SE of Coef used to calculate t ratios to
    determine which lags are significant
  • For goodness of fit refer to AIC, SIC and MAPE
  • Can restrict out variables

6
Time Series Model Estimation
  • Dickey-Fuller test indicates whether the data
    series used for the model, Di,t , is stationary
    and if the model is D2,t a b1 D1,t the DF it
    indicates that t stat for b1 is lt -2.90
  • Augmented DF test indicates whether the data
    series Di,t are stationary, if we added a trend
    to the model and one or more lags
  • Di,t a b1 Di,t-1 b2 Di,t-2 b3 Di,t-3 b4
    Tt
  • SIC indicates the value of the Schwarz Criteria
    for the number lags and differences used in
    estimation
  • Change the number of lags and observe the SIC
    change
  • AIC indicates the value of the Aikia information
    criteria for the number lags used in estimation
  • Change the number of lags and observe the AIC
    change
  • Best number of lags is where AIC is minimized
  • Changing number of lags also changes the MAPE and
    SD residuals

7
Time Series Model Forecasting
  • Assume a series that is stationary and has T
    observations of data so estimate the model as an
    AR(0 difference, 1 lag)
  • Forecast the first period ahead as
  • YT1 a b1 YT
  • Forecast the second period ahead as
  • YT2 a b1 YT1
  • Continue in this fashion for more periods
  • This ONLY works if Y is stationary, based on the
    DF test for zero lags

8
Time Series Model Forecasting
  • What if D1,t was stationary? How do you
    forecast?
  • First period ahead forecast is
  • D1,T YT YT-1
  • D1,T1 a b1 D1,T
  • Add the calculated D1,T1 to YT
  • YT1 YT D1,T1
  • Second period ahead forecast is
  • D1,T2 a b D1,T1
  • YT2 YT1 D1,T2
  • Repeat the process for period 3 and so on
  • This is referred to as the chain rule of
    forecasting

9
For Model D1,t 4.019 0.42859 D1,T-1
10
Time Series Model Forecast
11
Time Series Model Estimation
  • Impulse Response Function
  • Shows the impact of a 1 unit change in YT on the
    forecast values of Y over time
  • Good model is one where impacts decline to zero
    in short number of periods

12
Time Series Model Estimation
  • Impulse Response Function will die slowly if the
    model has to many lags
  • Same data series fit with 1 lag and a 6 lag model

13
Time Series Model Estimation
  • Dynamic stochastic Simulation of a time series
    model

Lecture 6
14
Time Series Model Estimation
  • Look at the simulation in Lecture 6 Time
    Series.XLS

15
Time Series Model Estimation
  • Result of a dynamic stochastic simulation

16
Vector Autoregressive (VAR) Models
  • VAR models a time series models where two or more
    variables at thought to be correlated and
    together they explain more than one variable by
    itself
  • For example forecasting
  • Sales and Advertising
  • Money supply and interest rate
  • Supply and Price
  • We are assuming that
  • Yt f(Yt-i and Zt-i)

17
Time Series Model Estimation
  • Take the example of advertising and sales
  • ATi a b1DA1,T-1 b2 DA1,T-2
  • c1DS1,T-1 c2 DS1,T-2
  • STi a b1DS1,T-1 b2 DS1,T-2
    c1DA1,T-1 c2 DA1,T-2
  • Where A is advertising and S is sales
  • DA is the difference for A
  • DS is the difference for S
  • In this model we fit A and S at the same time and
    A is affected by its lag differences and the
    lagged differences for S
  • The same is true for S affected by its own lags
    and those of A

18
Time Series Model Estimation
  • Advertising and sales VAR model
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