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Course Objectives

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Unbounded Trend. Linear: Yt = b0 b1 t e. Quadratic: Yt = b0 b1 t b2 t2 e ... Trend Model With Correlated Residual. Durbin Watson Statistic. Some Key ... – PowerPoint PPT presentation

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Title: Course Objectives


1
Standard Trend Models
2
Trend Curves
  • Purposes of a Trend Curve
  • 1. Forecasting the long run
  • 2. Estimating the growth rate

3
Standard Trend Curves
  • Key Properties
  • have a simple form
  • have good track records
  • software for fitting is widely available

4
Types of Standard Trend Curves
  • For unbounded data
  • linear
  • quadratic
  • exponential
  • For bounded (S shaped) data
  • logistic
  • Gompertz

5
Unbounded Trend
  • Linear Yt b0 b1 t e
  • Quadratic Yt b0 b1 t b2 t2 e
  • Log-linear ln(Yt) b0 b1 t e

6
Two Standard S Curves
1. Logistic Curve
2. Gompertz Curve
7
S Curves (Life Cycle Theory)
  • 4 Stages of New Technology Life Cycle
  • 1. Slow growth at the beginning stage
  • 2. Rapid growth
  • 3. Slow growth during the mature stage
  • 4. Decline during the final stage

8
S - Curves Point of Inflection
Y
second derivative 0
Y(ln(a) /b) g/2 for L
Y(ln(a) /b) g /e for G
Concave Up
Concave down
Time
ln(a)/b
9
Model Selection Process
Linear / Quadratic Exponential (linear in
log) (standard regression)
  • 1. Timeplot
  • 2. Take a log?
  • No
  • Yes
  • 3. Bounded?
  • No
  • Yes

Logistic / Gompertz/ (nonlinear regression)
10
Nonlinear Least Squares
  • SPSS is one of the few statistics packages that
    provide routines for fitting nonlinear regression
    models.
  • You have to provide initial estimates for
    parameters.

11
Getting Initial Parameter Values- Logistic Curve
Estimate g from data, and compute Regress the
variable on t.
12
Getting Initial Parameter Values- Gompertz Curve
Estimate g from data, and compute Regress the
variable on t.
13
Durbin-Watson Test
14
White Noise Residuals
  • WN (white noise) uncorrelated
  • Ex. et WN(0, s) (weak WN)
  • iid independent and identically distributed
  • Ex. et iid N(0, s) (strong WN)

15
Spurious Trend
Downward Bias SE of Coefficient
SER
Positive Auto- Correlated Residual
16
Trend Model With Correlated Residual
17
Durbin Watson Statistic
18
Some Key Values of DW Stat
  • E(DW) 2 if H0
  • Table available for DW if H0

19
DW Test
  • The Null and Alternative Hypotheses
  • H0 r 0
  • H1 r gt 0 -gt positive autocorrelated
  • residual
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