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Empirical Demand Functions

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Case StudiesMP3 Players at Sunny's Music.xls. Linear Demand Function & Elasticity ... Case StudiesMP3 Players at Sunny's Music.xls. Estimating Market Demand ... – PowerPoint PPT presentation

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Title: Empirical Demand Functions


1
Empirical Demand Functions
  • Problems in Specification Estimation

2
Objectives of Discussion
  • Provide overview of several different methods of
    estimating demand functions
  • Provide more in-depth examination of statistical
    demand estimation
  • Discuss what is involved in setting up a
    statistical demand estimation
  • Look at the special issues that are involved in
    estimating Price Takers Demand
  • Examine the techniques issues in estimating an
    Price Setters demand

3
Consumer Surveys Demand Estimation
  • Advantage
  • Can focus more directly on question of interest
  • Many problems
  • Sample selection--3 Rs--random, representative
    robust
  • Bias--interviewer, respondent and analyst
  • Over-commitment bias--gap between intentions
    actions
  • Confusing questions
  • Lack of information by respondents
  • Attention decay

4
Market Simulations Experiments
  • Technique
  • test market environments or market experiments
    are set-up to measure responses
  • Problems
  • Very expensive to conduct a meaningful experiment
  • Usually undertaken on a scale that is too small
    to generalize
  • Always have many uncontrollable variables that
    may affect results

5
Statistical Demand Estimation
  • Problems
  • Frequently misused by untrained, or unscrupulous
  • Finding the right database
  • Advantages
  • Potential to yield more accurate results than
    other methods
  • Involves data based on observation, rather than
    participation--less likelihood of biased or
    incorrect data
  • Can estimate the affects between two variables,
    while holding other factors constant
  • Can develop probability statements about results

6
Specifying the Demand Model
  • Specifying the variables to be included
  • Rely on theory of consumer behavior
  • Variables suggested--Price, income, price of
    related goods, size of market, price
    expectations, tastes
  • Frequently ignore price expectations tastes
    because hard to get good data
  • Choosing appropriate measures for variables?
  • For example what price do you use in a study of
    housing?
  • What measure do you use for income in study of
    housing?--per capita income? household income?
  • What geographic boundaries do you choose for
    measuring a variable?

7
Specifying the Demand Model
  • Choosing a functional form?
  • For demand functions usually choose between
    linear form power function
  • Linear function
  • Parameters in linear function tell change in Qx
    for 1-unit change in associated variable

..\Case Studies\MP3 Players at Sunny's Music.xls
8
Linear Demand Function Elasticity
  • Most price elasticities are dependent on point at
    which it is measured on demand curve
  • Usually measure E at mean values of all
    right-hand side variables
  • Coefficient must be significant for elasticity
    estimate to be valid
  • Other elasticity coefficients measured in similar
    manner

9
Power Function
  • Used frequently when think demand is nonlinear
  • Exponents are the elasticities of associated
    variables
  • Elasticities are constant
  • Can be estimated with same techniques of linear
    function by taking logs of both sides
  • ..\Case Studies\MP3 Players at Sunny's Music.xls

10
Estimating Market Demand
  • What is main problem with estimating Mkt Demand?
  • Values for price and quantity are determined
    affected by variations in both supply demand
  • Leads to what is referred to as The
    Simultaneity Problem--actually two problems
  • The identification problem--being able to
    identify if changes in price quantity are
    movements along a demand curve or movements
    between equilibrium points
  • Simultaneous Eq. Bias--Because price is
    endogenous, it is correlated with the error terms
    cant be estimate with OLS

11
The Identification Problem
  • In order to identify the demand curve, must have
    observations of price and quantity that can be
    traced to shifts in Supply curve
  • To trace out a demand curve, need to have way of
    allowing for shifts in supply while holding
    demand fixed.
  • This happens when supply equation includes at
    least one variable that causes supply to shift,
    but does not have any effect on demand e.g.
  • Qd a b(P) and QS k d(P) f(L) where L
    is price of labor.
  • C7 Simultaneous Shifts.ppt
  • C7 Trace Demand.ppt

12
2SLS
  • OLS technique for estimating equations doesnt
    work when have simultaneous equations such as
    exist in market demand situation
  • The technique of two stage least squares is then
    used
  • The second stage of 2SLS produces estimates that
    look very similar to OLS
  • Main difference is that technique does not
    produce a measure of overall goodness of fit like
    OLS
  • t-statistics can still be used to test individual
    coefficients

13
Estimating Individual Firms Demand
  • Many times easier than estimating market demand
    because no simultaneity problem
  • Can only estimate demand for price-setting
    firms because price taking firms demand is
    perfectly elastic
  • Use typical demand specification in most cases

14
Time-Series Forecasts
  • A time-series model shows how a time-ordered
    sequence of observations on a variable is
    generated
  • Simplest form is linear trend forecasting
  • Sales in each time period (Qt ) are assumed to be
    linearly related to time (t)

15
Linear Trend Forecasting
  • If b gt 0, sales are increasing over time
  • If b lt 0, sales are decreasing over time
  • If b 0, sales are constant over time

16
A Linear Trend Forecast(Figure 7.1)
Q
?
?
?
Sales
?
?
?
?
?
?
?
t
2004
2005
2006
1997
1998
1999
2000
2001
2002
2003
Time
17
Forecasting Sales for Terminator Pest Control
(Figure 7.2)
18
Seasonal (or Cyclical) Variation
  • Can bias the estimation of parameters in linear
    trend forecasting
  • To account for such variation, dummy variables
    are added to the trend equation
  • Shift trend line up or down depending on the
    particular seasonal pattern
  • Significance of seasonal behavior determined by
    using t-test or p-value for the estimated
    coefficient on the dummy variable

19
Sales with Seasonal Variation(Figure 7.3)
2004
2005
2006
2007
20
Dummy Variables
  • To account for N seasonal time periods
  • N 1 dummy variables are added
  • Each dummy variable accounts for one seasonal
    time period
  • Takes value of 1 for observations that occur
    during the season assigned to that dummy variable
  • Takes value of 0 otherwise

21
Effect of Seasonal Variation(Figure 7.4)
Qt
Sales
t
Time
22
Some Final Warnings
  • The further into the future a forecast is made,
    the wider is the confidence interval or region of
    uncertainty
  • Model misspecification, either by excluding an
    important variable or by using an inappropriate
    functional form, reduces reliability of the
    forecast
  • Forecasts are incapable of predicting sharp
    changes that occur because of structural changes
    in the market
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