INTRODUCTION ECONOMETRICS - PowerPoint PPT Presentation

1 / 18
About This Presentation
Title:

INTRODUCTION ECONOMETRICS

Description:

ARMA (p, q) Exponential decay & exponential decay. Volatility of ... Step 1: Identification of p & q in the ARMA process- ARIMA(1,1,0) process identified ... – PowerPoint PPT presentation

Number of Views:95
Avg rating:3.0/5.0
Slides: 19
Provided by: uvp4
Category:

less

Transcript and Presenter's Notes

Title: INTRODUCTION ECONOMETRICS


1
INTRODUCTION ECONOMETRICS
  • Lecture week 13
  • Time Series Econometrics Forecasting

2
Forecasting
  • Important part of econometrics analysis
  • Various methods of forecasting

3
Approaches to Economic Forecasting
  • Exponential Smoothing Methods
  • Single-Equation Regression Models
  • Simultaneous- Equation Regression Models
  • Autoregressive Integrated Moving Average (ARIMA)
    Models
  • Vector Autoregressive Models (VAR)

4
AR, MA, and ARIMA modeling of time series
  • AR
  • (Yt -?) a1(Yt-1 - ?) ut ..
    ..AR(1)
  • (Yt -?) a1(Yt-1 - ?) a2(Yt-2 - ?) ut
    ...AR(2)
  • (Yt -?) a1(Yt-1 - ?) a2(Yt-2 - ?)
    ak(Yt-k - ?)..AR(k)
  • MA
  • Yt ß0ut ß1ut-1.........
    MA(1)
  • Yt ß0ut ß1ut-1 ß2ut-2......
    ..MA(2)
  • Yt ß0ut ß1ut-1 ß2ut-2 ßkut-k
    ..........MA(k)
  • ARMA
  • Yt ? a1Yt-1 ß0ut ß1ut-1 ....A
    RIMA(1)
  • Yt ? a1Yt-1 a2Yt-2 aKYt-K ß0ut ß1ut-1
    ß2ut-1 ßKut-K ....ARMA (p,q)

5
The Box-Jenkins (BJ) Methodology
  • Identification
  • To find the appropriate values of p and q
  • Correlogram and partial correlogram
  • Estimation
  • Parameters of the AR and MA
  • Linear (OLS) models
  • Nonlinear models
  • Diagnostic checking
  • Check if the residuals from this model are white
    noise
  • Forecasting
  • Superior compared to traditional econometric
    models

6
Identification
  • AR (p)
  • ACF Decays exponentially or with damped sine
    wave pattern or both
  • PACF Significant spikes through lags p
  • MA (q)
  • ACF Significant spikes through lags q
  • PACF Declines exponentially
  • ARMA (p, q)
  • Exponential decay exponential decay

7
Volatility of Financial Time Series
  • Absolute Percent Change
  • Variance of Spot Price around its trend
  • Moving Average of Standard Deviation
  • Autoregressive Conditional Heteroscedasticity
    (ARCH)

8
Autoregressive Conditional Hetroscedasticity
(ARCH) Steps followed
  • Most frequently used
  • ARIMA(p,d,q) modeling
  • Box-Jenkins (BJ) Methodology
  • Test for ARCH effect
  • ?2 a1 a2 ?2t-1 ?2t-2 ?2t-k
  • Generalized Autoregressive Conditional
    Heteroscedasticy (GARCH) modeling.
  • ?t2 a1 a2 ?2t-1 a3 ?2t-1

9
Steps in the Box-Jenkins Methodology to model
ARIMA(p,q) process
10
Autoregressive Conditional Hetroscedasticity
Effect (ARCH) (cont)
11
ARCH/GARCH Approach to measure volatility in SAs
exchange rate Non stationarity confirmed)
12
Sufficiency of First Differencing to convert
exchange rate to stationary series confirmed
13
Step 1 Identification of p q in the ARMA
process- ARIMA(1,1,0) process identified
14
Step 2 Estimation of ARMA(1,1,0) process
15
Step 3 Diagnostic test using ARIMA(1,1,0) model.
Adequacy of the model confirmed
16
Test for ARCH effect conducted the presence of
ARCH(1) confirmed i.e. conditional variance or
volatility of exchange rate is not constant.
17
GARCH modeling conducted the significance of the
GARCH(1) variable confirmed overtime change in
the volatility of exchange rate
18
Conditional Standard deviation (a measure of
volatility in the SAs exchange rate) frequency
of SAs exchange rate volatility has increased
since end of 2001 it is increasing.
Write a Comment
User Comments (0)
About PowerShow.com