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Elasticities and Regression Analysis

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Title: Elasticities and Regression Analysis


1
Elasticities and Regression Analysis
  • Chapter 3

2
Suppose the price of a good increased by 50. How
would that change the amount you buy?
Diet Coke
Aspirin
Gasoline
Espresso Royale Coffee
MSU Basketball tickets
Shoes
Inelastic
Elastic
3
Own Price Elasticity of Demand Defined
  • How sensitive quantity demanded is to price
  • More formally

Where D means change
4
Example
  • What is the own price elasticity of demand for
    cigarettes?
  • -0.4
  • Interpret this number
  • A 1 increase in the price of cigarettes will
    lower the quantity demanded by 0.4

5
Example
  • If the government wanted to decrease smoking by
    10 percent, by how much would the government have
    to increase the price of tobacco?

.25 25
6
What determines relative price elasticity?
  • Number of substitutes
  • The more substitutes or the closer the
    substitutes, the
  • more elastic
  • Time interval
  • The longer time interval the
  • more elastic
  • Share of budget
  • The larger share of the budget the
  • more elastic

Ex. Diet Coke
Ex. Gasoline
Ex. Salt
7
Own Price Elasticity of Demand
  • Why do we care?
  • Tells us what affect a D in P will have on
    revenue
  • Tells us what affect a D in P will have on Q (ex
    taxes)

8
Own Price Elasticity of Demand
  • What sign does it have?
  • Negative, Why?
  • Law of Demand

9
Calculating Own Price Elasticity of DemandAt a
single point, small changes in P and Q
10
Own Price Elasticity and demand along a linear
demand curve
  • The equation for the demand curve below is P
    12-2Q
  • The slope of the demand curve is -2

11
Calculating Own Price Elasticity of Demand _at_ B
Point Q P hd
A 0 12
B 1 10
C 2 8
D 3 6
E 4 4
F 5 2
G 6 0
-8
-5
-2
-1
-1/2
-1/5
0
-5
12
Own Price Elasticity of Demand
  • hd lt-1 (further from 0) is Elastic
  • change in QD gt change in P
  • hdgt-1 (closer to 0) is Inelastic
  • change in QD lt change in P

13
Calculating Own Price Elasticity of Demand
Point Q P hd
A 0 12
B 1 10 -5
C 2 8 -2
D 3 6 -1
E 4 4 -½
F 5 2 -1/5
G 6 0 0
hdlt-1 Elastic
-
hdgt-1 Inelastic
14
Extremes
  • Perfectly Inelastic
  • completely unresponsive to changes in price

D
P
Ex. Insulin
5
4
Q
5
15
Extremes
  • Perfectly Elastic
  • completely responsive to changes in price

P
Ex. Farmer Joes Corn
5
D
4
Q
5
16
Elasticity and Total Revenue
  • Total revenue is
  • the amount received by sellers of a good.
  • Computed as
  • TR P X Q

17
Intuition Check
  • If an item goes on sale (lower price), what will
    happen to the total revenue on that item?

18
Elasticity and Total Revenue
  • Marginal Revenue is
  • the additional revenue from selling one more of a
    good.
  • Computed as
  • MR DTR/DQ

19
Own Price Elasticity of Demand
Pt Q P hd TR
A 0 12 -8
B 1 10 -5
C 2 8 -2
D 3 6 -1
E 4 4 -1/2
F 5 2 -1/5
G 6 0 0
20
Own Price Elasticity of Demand
MR
Pt Q P hd TR
A 0 12 -8
B 1 10 -5
C 2 8 -2
D 3 6 -1
E 4 4 -1/2
F 5 2 -1/5
G 6 0 0
0
10
10
6
16
2
18
-2
16
TR
-6
10
-10
0
21
Income Elasticity of Demand Defined
  • How sensitive quantity demanded is to income
  • More formally

Where M means income
22
Interpreting Income Elasticity
  • Suppose Income elasticity is 2
  • A 1 percent increase in income leads to a...
  • 2 percent increase in quantity demanded

23
Sign of Income Elasticity
Ex. Great Harvest Bread
  • Positive
  • Normal Good
  • Negative
  • Inferior Good

Ex. Spam
24
Cross-price Elasticity of Demand Defined
  • How sensitive quantity demanded of X is to a
    change in the price of Y
  • More formally

Where PY means price of Y
25
Sign of Cross Price Elasticity
  • Positive
  • substitutes
  • Negative
  • complements

Ex. Accord and Taurus , Diet Coke and Diet Pepsi
Ex. Pizza and Beer, gasoline and SUVs, software
and hardware
26
Estimating Elasticities from Data
  • Demand for Good X
  • QDx f(Px, PY, M, H1 , H2, )
  • where,
  • Px is the price of good X,
  • PY is the price of good Y,
  • M is income,
  • H1 is size of population,
  • H2 is consumers expectations.

27
Estimating Elasticities from Data
  • Assume linear demand,
  • QDx a0 axPx aYPY aMM aH1 H1
  • Or assume log linear demand,
  • log(QDx) ß0 ß xlog(Px) ß Ylog(PY)
  • ß Mlog(M) ß H1log(H1)

28
Estimating Own Price Elasticity
  • When the change is very, very small,

29
Estimating Own Price Elasticity
  • If assume,
  • QDx a0 axPx aYPY aMM aH1 H1
  • Then,
  • ax
  • so,
    ax

30
Estimating Own Price Elasticity
  • If assume,
  • log(QDx) ß 0 ß xlog(Px) ß Ylog(PY)
  • Then,
  • ß x
  • so,
    ß x

31
Estimating Cross Price Elasticity
  • Similar to estimating own price elasticity
    except consider the affect of a change in the
    price of Y on the quantity demand of X.
  • If assume linear specification,
  • If assume log linear specification,

32
If you are a manager, why would you pay an
economist big to estimate these elasticities?
  1. Quantify how a change in (own) price affects
    quantity demanded.
  2. Forecast future demand.
  3. If you offer a product line, you want to know how
    a change in price in one good affects the
    quantity demanded of another good you produce.

33
Elasticities and Public Policy
  • If you are a public official, why might you care
    about elasticities for alcohol, drugs and
    cigarettes?
  • How do you estimate these elasticities?

34
Words of Caution
  • There are many complicated issues associated with
    estimating elasticities. To accurately estimate
    these elasticities, one needs detailed knowledge
    of the product/industry, sophisticated
    statistical techniques, reasonable variation in
    prices/quantities and precise data.

35
Estimating Elasticities of Ethanol Gasoline
(Soren Anderson, 2010)
  • Uses gas station level data from Minnesota
  • Regression Specification,
  • log(QDe) ß 0 ß elog(Pe) ßglog(Pg)ßFlog
    (FFV)
  • ßSlog (Stations)e
  • where,
  • Pe is price of ethanol, Pg is price of gasoline,
    FFV is the number of flex-fuel vehicles in county
    and Stations is the number of station with
    ethanol in county.

36
Estimating Elasticities of Ethanol Gasoline
(Soren Anderson, 2007)
  • Regression Results,
  • log(QDe) ß 0-1.65log(Pe) 2.62log(Pg)
    0.07log (FFV)-0.14log (Stations)

37
Collinearity Between Gas and Ethanol Prices
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