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Page 1: Demand estimation

Department of Business Administration

FALL 2010-11

Demand Estimation

byAssoc. Prof. Sami Fethi

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Demand Estimation

To use these important demand relationship in decision analysis, we need empirically to estimate the structural form and parameters of the demand function-Demand Estimation.

Qdx= (P, I, Pc, Ps, T)

(-, + , - , +, +) The demand for a commodity arises from the consumers’

willingness and ability to purchase the commodity. Consumer demand theory postulates that the quantity demanded of a commodity is a function of or depends on the price of the commodity, the consumers’ income, the price of related commodities, and the tastes of the consumer.

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation Demand Estimation

In general, we will seek the answer for the In general, we will seek the answer for the following qustions:following qustions:

How much will the revenue of the firm change after increasing the price of the commodity?

How much will the quantity demanded of the commodity increase if consumers’ income increase

What if the firms double its ads expenditure? What if the competitors lower their prices? Firms should know the answers the

abovementioned questions if they want to achieve the objective of maximizing thier value.

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

The Identification Problem

The demand curve for a commodity is generally estimated from market data on the quantity purchased of the commodity at various price over time (i.e. Time-series data) or various consuming units at one point in time (i.e. Cross-sectional data).

Simply joinning priced-quantity observations on a graph does not generate the demand curve for a commodity. The reason is that each priced-quantity observation is given by the intersection of a different and unobserved demand and supply curve of commodity.

In other words, The difficulty of deriving the demand curve for a commodity from observed priced-quantity points that results from the intersection of different and unobserved demand and supply curves for the commodity is referred to as the identification problem.

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation The Identification Problem In the following demand

curve, Observed price-quantity data points E1, E2, E3, and E4, result respectively from the intersection of unobserved demand and supply curves D1

and S1, D2 and S2, D3 and S3, and D4 and S4. Therefore, the dashed line connecting observed points E1, E2, E3, and E4 is not the demanded curve for the commodity. The derived a demand curve for the commodity, say, D2, we allow the supply to shift or to be different and correct, through regression analysis, for the forces that cause demand curve D2 to shift or to be different as can be seen at points E2, E'2. This is done by regression analysis.

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Demand Estimation: Marketing Research Approaches

Consumer Surveys Observational Research Consumer Clinics Market Experiments

These approaches are usually covered extensively in marketing courses, however the most important of these are consumer surveys and market experiments.

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Demand Estimation: Marketing Research Approaches

o Consumer surveys: These surveys require the questioning of a firm’s customers in an attempt to estimate the relationship between the demand for its products and a variety of variables perceived to be for the marketing and profit planning functions.

These surveys can be conducted by simply stopping and questioning people at shopping centre or by administering sophisticated questionnaires to a carefully constructed representative sample of consumers by trained interviewers.

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Demand Estimation: Marketing Research Approaches

Major advantages: they may provide the only information available; they can be made as simple as possible; the researcher can ask exactly the questions they want

Major disadvantages: consumers may be unable or unwilling to provide reliable answers; careful and extensive surveys can be very expensive.

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Demand Estimation: Marketing Research Approaches

Market experiments: attempts by the firm to estimate the demand for the commodity by changing price and other determinants of the demand for the commodity in the actual market place.

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Demand Estimation: Marketing Research Approaches

Major advantages: consumers are in a real market situation; they do not know that they being observed; they can be conducted on a large scale to ensure the validity of results.

Major disadvantages: in order to keep cost down, the experiment may be too limited so the outcome can be questionable; competitors could try to sabotage the experiment by changing prices and other determinants of demand under their control; competitors can monitor the experiment to gain very useful information about the firm would prefer not to disclose.

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Purpose of Regression Analysis

Regression Analysis is Used Primarily to Model Causality and Provide Prediction Predict the values of a dependent

(response) variable based on values of at least one independent (explanatory) variable

Explain the effect of the independent variables on the dependent variable

The relationship between X and Y can be shown on a scatter diagram

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Scatter Diagram

It is two dimensional graph of plotted points in which the vertical axis represents values of the dependent variable and the horizontal axis represents values of the independent or explanatory variable.

The patterns of the intersecting points of variables can graphically show relationship patterns.

Mostly, scatter diagram is used to prove or disprove cause-and-effect relationship. In the following example, it shows the relationship between advertising expenditure and its sales revenues.

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Ch 4 : Demand Estimation

Scatter Diagram

Scatter Diagram-Example

Year X Y

1 10 44

2 9 40

3 11 42

4 12 46

5 11 48

6 12 52

7 13 54

8 13 58

9 14 56

10 15 60

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation Scatter Diagram

Scatter diagram shows a positive relationship between the relevant variables. The relationship is approximately linear.

This gives us a rough estimates of the linear relationship between the variables in the form of an equation such as

Y= a+ b X

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Regression Analysis

In the equation, a is the vertical intercept of the estimated linear relationship and gives the value of Y when X=0, while b is the slope of the line and gives an estimate of the increase in Y resulting from each unit increase in X.

The difficulty with the scatter diagram is that different researchers would probably obtain different results, even if they use same data points. Solution for this is to use regression analysis.

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Regression Analysis

Regression analysis: is a statistical technique for obtaining the line that best fits the data points so that all researchers can reach the same results.

Regression Line: Line of Best Fit Regression Line: Minimizes the sum of the

squared vertical deviations (et) of each point from the regression line.

This is the method called Ordinary Least Squares (OLS).

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation Regression Analysis

In the table, Y1 refers actual or observed sales revenue of $44 mn associated with the advertising expenditure of $10 mn in the first year for which data collected.

In the following graph, Y^1 is the

corresponding sales revenue of the firm estimated from the regression line for the advertising expenditure of $10 mn in the first year.

The symbol e1 is the corresponding vertical deviation or error of the actual sales revenue estimated from the regression line in the first year. This can be expressed as e1= Y1- Y^

1.

Year X Y

1 10 44

2 9 40

3 11 42

4 12 46

5 11 48

6 12 52

7 13 54

8 13 58

9 14 56

10 15 60

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation Regression Analysis

In the graph, Y^1 is

the corresponding sales revenue of the firm estimated from the regression line for the advertising expenditure of $10 mn in the first year.

The symbol e1 is the corresponding vertical deviation or error of the actual sales revenue estimated from the regression line in the first year. This can be expressed as e1= Y1- Y^

1.

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Regression Analysis

Since there are 10 observation points, we have obviously 10 vertical deviations or error (i.e., e1 to e10). The regression line obtained is the line that best fits the data points in the sense that the sum of the squared (vertical) deviations from the line is minimum. This means that each of the 10 e values is first squared and then summed.

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Simple Regression Analysis

Now we are in a position to calculate the value of a ( the vertical intercept) and the value of b (the slope coefficient) of the regression line.

Conduct tests of significance of parameter estimates.

Construct confidence interval for the true parameter.

Test for the overall explanatory power of the regression.

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Simple Linear Regression Model

Regression line is a straight line that describes the dependence of the average average value value of one variable on the other

ii iY X

Y Intercept SlopeCoefficient

Random Error

Independent (Explanatory) Variable

Regression

Line

Dependent (Response) Variable

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Ch 4 : Demand Estimation

Ordinary Least Squares (OLS)

Model: t t tY a bX e

ˆˆ ˆt tY a bX

ˆt t te Y Y

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Ordinary Least Squares (OLS)

Objective: Determine the slope and intercept that minimize the sum of the squared errors.

2 2 2

1 1 1

ˆˆ ˆ( ) ( )n n n

t t t t tt t t

e Y Y Y a bX

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Ordinary Least Squares (OLS)

Estimation Procedure

1

2

1

( )( )ˆ

( )

n

t tt

n

tt

X X Y Yb

X X

ˆa Y bX

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation Ordinary Least Squares (OLS)

Estimation Example

1 10 44 -2 -6 122 9 40 -3 -10 303 11 42 -1 -8 84 12 46 0 -4 05 11 48 -1 -2 26 12 52 0 2 07 13 54 1 4 48 13 58 1 8 89 14 56 2 6 12

10 15 60 3 10 30120 500 106

4910101149

30

Time tX tY tX X tY Y ( )( )t tX X Y Y 2( )tX X

10n

1

12012

10

nt

t

XX

n

1

50050

10

nt

t

YY

n

1

120n

tt

X

1

500n

tt

Y

2

1

( ) 30n

tt

X X

1

( )( ) 106n

t tt

X X Y Y

106ˆ 3.53330

b

ˆ 50 (3.533)(12) 7.60a

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation Ordinary Least Squares (OLS)

Estimation Example

10n 1

12012

10

nt

t

XX

n

1

50050

10

nt

t

YY

n

1

120n

tt

X

1

500n

tt

Y

2

1

( ) 30n

tt

X X

1

( )( ) 106n

t tt

X X Y Y

106ˆ 3.53330

b

ˆ 50 (3.533)(12) 7.60a

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

The Equation of Regression Line

The equation of the regression line can be constructed as follows:

Yt^=7.60 +3.53 Xt

When X=0 (zero advertising expenditures), the expected sales revenue of the firm is $7.60 mn. In the first year, when X=10mn, Y1

^= $42.90 mn.

Strictly speaking, the regression line should be used only to estimate the sales revenues resulting from advertising expenditure that are within the range.

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Ch 4 : Demand Estimation

Crucial Assumptions

Error term is normally distributed. Error term has zero expected value

or mean. Error term has constant variance in

each time period and for all values of X.

Error term’s value in one time period is unrelated to its value in any other period.

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Ch 4 : Demand Estimation

Tests of Significance: Standard Error

To test the hypothesis that b is statistically significant (i.e., advertising positively affects sales), we need first of all to calculate standard error (deviation) of b^.

The standard error can be calculated in the following expression:

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Ch 4 : Demand Estimation

Tests of Significance

Standard Error of the Slope Estimate

2 2

ˆ 2 2

ˆ( )

( ) ( ) ( ) ( )t t

bt t

Y Y es

n k X X n k X X

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Tests of Significance

Example Calculation

2 2

1 1

ˆ( ) 65.4830n n

t t tt t

e Y Y

2

1

( ) 30n

tt

X X

2

ˆ 2

ˆ( ) 65.48300.52

( ) ( ) (10 2)(30)t

bt

Y Ys

n k X X

1 10 44 42.90

2 9 40 39.37

3 11 42 46.43

4 12 46 49.96

5 11 48 46.43

6 12 52 49.96

7 13 54 53.49

8 13 58 53.49

9 14 56 57.02

10 15 60 60.55

1.10 1.2100 4

0.63 0.3969 9

-4.43 19.6249 1

-3.96 15.6816 0

1.57 2.4649 1

2.04 4.1616 0

0.51 0.2601 1

4.51 20.3401 1

-1.02 1.0404 4

-0.55 0.3025 9

65.4830 30

Time tX tYtY ˆ

t t te Y Y 2 2ˆ( )t t te Y Y 2( )tX X

Yt^=7.60 +3.53 Xt =7.60+3.53(10)= 42.90

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Ch 4 : Demand Estimation

Tests of Significance

Example Calculation

2

ˆ 2

ˆ( ) 65.48300.52

( ) ( ) (10 2)(30)t

bt

Y Ys

n k X X

2

1

( ) 30n

tt

X X

2 2

1 1

ˆ( ) 65.4830n n

t t tt t

e Y Y

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Tests of Significance

Calculation of the t Statistic

ˆ

ˆ 3.536.79

0.52b

bt

s

Degrees of Freedom = (n-k) = (10-2) = 8

Critical Value (tabulated) at 5% level =2.306

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Confidence interval

We can also construct confidence interval for the true parameter from the estimated coefficient.

Accepting the alternative hypothesis that there is a relationship between X and Y.

Using tabular value of t=2.306 for 5% and 8 df in our example, the true value of b will lies between 2.33 and 4.73

t=b^+/- 2.306 (sb^)=3.53+/- 2.036 (0.52)

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Tests of Significance

Decomposition of Sum of Squares

2 2 2ˆ ˆ( ) ( ) ( )t t tY Y Y Y Y Y

Total Variation = Explained Variation + Unexplained Variation

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Tests of Significance

Decomposition of Sum of Squares

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Ch 4 : Demand Estimation

Coefficient of Determination

Coefficient of Determination: is defined as the proportion of the total variation or dispersion in the dependent variable that explained by the variation in the explanatory variables in the regression.

In our example, COD measures how much of the variation in the firm’s sales is explained by the variation in its advertising expenditures.

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Tests of Significance

Coefficient of Determination

22

2

ˆ( )

( )t

Y YExplained VariationR

TotalVariation Y Y

2 373.840.85

440.00R

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Coefficient of Correlation

Coefficient of Correlation (r): The square root of the coefficient of determination.

This is simply a measure of the degree of association or co-variation that exists between variables X and Y.

In our example, this mean that variables X and Y vary together 92% of the time.

The sign of coefficient r is always the same as the sign of coefficient of b^.

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Tests of Significance

Coefficient of Correlation

2 ˆr R with the signof b

0.85 0.92r

1 1r

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Multiple Regression Analysis

Model:

1 1 2 2 ' 'k kY a b X b X b X

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Relationship between 1 dependent & 2 or more independent variables is a linear function

1 2i i i k ki iY X X X

Y-intercept Slopes Random error

Dependent (Response) variable

Independent (Explanatory) variables

Multiple Regression Analysis

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Ch 4 : Demand Estimation

Multiple Regression Analysis

X2

Y

X1Y|X = 0 + 1X 1i + 2X 2i

0

Y i = 0 + 1X 1i + 2X 2i + i

ResponsePlane

(X 1i,X 2i)

(O bserved Y )

i

X2

Y

X1Y|X = 0 + 1X 1i + 2X 2i

0

Y i = 0 + 1X 1i + 2X 2i + i

ResponsePlane

(X 1i,X 2i)

(O bserved Y )

i

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© 2004, Managerial Economics, Dominick Salvatore © 2010/11, Sami Fethi, EMU, All Right Reserved.

Ch 4 : Demand Estimation

Multiple Regression Analysis

Too complicated by hand!

Ouch!

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Ch 4 : Demand Estimation

Multiple Regression Model: Example

Develop a model for estimating heating oil used for a single family home in the month of January, based on average temperature and amount of insulation in inches.

Oil (Gal) Temp Insulation275.30 40 3363.80 27 3164.30 40 1040.80 73 694.30 64 6

230.90 34 6366.70 9 6300.60 8 10237.80 23 10121.40 63 331.40 65 10

203.50 41 6441.10 21 3323.00 38 352.50 58 10

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Ch 4 : Demand Estimation

Multiple Regression Model: Example

0 1 1 2 2i i i k kiY b b X b X b X Coefficients

Intercept 562.1510092X Variable 1 -5.436580588X Variable 2 -20.01232067

Excel Output

1 2ˆ 562.151 5.437 20.012i i iY X X

For each degree increase in temperature, the estimated average amount of heating oil used is decreased by 5.437 gallons, holding insulation constant.

For each increase in one inch of insulation, the estimated average use of heating oil is decreased by 20.012 gallons, holding temperature constant.

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Ch 4 : Demand Estimation

Multiple Regression Analysis

Adjusted Coefficient of Determination

2 2 ( 1)1 (1 )

( )

nR R

n k

Regression StatisticsMultiple R 0.982654757R Square 0.965610371Adjusted R Square 0.959878766Standard Error 26.01378323Observations 15

SST

SSRr ,Y 2

12

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Ch 4 : Demand Estimation

Interpretation of Coefficient of Multiple Determination

212 .9656Y

SSRr

SST

96.56% of the total variation in heating oil can be explained by temperature and amount of insulation

95.99% of the total fluctuation in heating oil can be explained by temperature and amount of insulation after adjusting for the number of explanatory variables and sample size

2adj .9599r

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Ch 4 : Demand Estimation

Testing for Overall Significance

Shows if Y Depends Linearly on All of the X Variables Together as a Group

Use F Test Statistic Hypotheses:

H0: …k = 0 (No linear relationship)

H1: At least one i ( At least one independentvariable affects Y )

The Null Hypothesis is a Very Strong Statement The Null Hypothesis is Almost Always Rejected

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Ch 4 : Demand Estimation

Multiple Regression Analysis

Analysis of Variance and F Statistic

/( 1)

/( )

Explained Variation kF

Unexplained Variation n k

2

2

/( 1)

(1 ) /( )

R kF

R n k

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Ch 4 : Demand Estimation Test for Overall Significance

Excel Output: Example

ANOVAdf SS MS F Significance F

Regression 2 228014.6 114007.3 168.4712 1.65411E-09Residual 12 8120.603 676.7169Total 14 236135.2

k -1= 2, the number of explanatory variables and dependent variable

n - 1p-value

k = 3, no of parameters

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Ch 4 : Demand Estimation

Test for Overall Significance:Example Solution

03.89

= 0.05

H0: 1 = 2 = … = k = 0

H1: At least one j 0

= .05

df = 2 and 12

Critical Value:

Test Statistic:

Decision:

Conclusion:

F 168.47

Reject at = 0.05.

There is evidence that at least one independent variable affects Y.

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Ch 4 : Demand Estimation

t Test StatisticExcel Output: Example

Coefficients Standard Error t Stat P-valueIntercept 562.1510092 21.09310433 26.65094 4.77868E-12Temp -5.436580588 0.336216167 -16.1699 1.64178E-09Insulation -20.01232067 2.342505227 -8.543127 1.90731E-06

t Test Statistic for X2 (Insulation)

t Test Statistic for X1 (Temperature)

i

i

b

bt

S

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Ch 4 : Demand Estimation t Test : Example Solution

Does temperature have a significant effect on monthly consumption of heating oil? Test at = 0.05.

H0: 1 = 0

H1: 1 0

df = 12

Critical Values:

Test Statistic:

t Test Statistic = -16.1699

Decision:

Reject H0 at = 0.05.

Conclusion:

There is evidence of a significant effect of temperature on oil consumption holding constant the effect of insulation.

Reject HReject H 00

.025 .025

-2.1788 2.17880

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Ch 4 : Demand Estimation

Problems in Regression Analysis

Multicollinearity: Two or more explanatory variables are highly correlated.

Heteroskedasticity: Variance of error term is not independent of the Y variable.

Autocorrelation: Consecutive error terms are correlated.

Functional form: Misspecified by the omission of a variable

Normality: Residuals are normally distributed or not

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Ch 4 : Demand Estimation

Practical Consequences of Multicollinearity

Large variance or standard error Wider confidence intervals Insignificant t-ratios A high R2 value but few significant t-

ratios OLS estimators and their Std. Errors

tend to be unstable Wrong signs for regression coefficients

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Ch 4 : Demand Estimation

Multicollinearity

How can Multicollinearity be overcome? Increasing number of observation Acquiring additional data A new sample Using an experience from a previous study Transformation of the variables Dropping a variable from the model This is the simplest solution, but the worse

one referring an economic model (i.e., model specification error)

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Ch 4 : Demand Estimation

Heteroskedasticity

Heteroskedasticity: Variance of error term is not independent of the Y variable or unequal/non-constant variance. This means that when both response and explanatory variables increase, the variance of response variables does not remain same at all levels of explanatory variables (cross-sectional data).

Homoscedasticity: when both response and explanatory variables increase, the variance of response variable around its mean value remains same at all levels of explanatory variables (equal variance).

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Ch 4 : Demand Estimation

Residual Analysis for Homoscedasticity Residual Analysis for Homoscedasticity

Heteroscedasticity Homoscedasticity

SR

X

SR

X

Y

X X

Y

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Ch 4 : Demand Estimation

Autocorrelation or serial correlation

Autocorrelation: Correlation between members of observation ordered in time as in time series data (i.e., residuals are correlated where consecutive errors have the same sign).

Detecting Autocorrelation: This can be detected by many ways. The most common used is DW statistics.

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Ch 4 : Demand Estimation

Durbin-Watson Statistic

Test for Autocorrelation

21

2

2

1

( )n

t tt

n

tt

e ed

e

If d=2, autocorrelation is absent.

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Ch 4 : Demand Estimation

Residual Analysis for IndependenceResidual Analysis for Independence

The Durbin-Watson Statistic– Used when data is collected over time to detect

autocorrelation (residuals in one time period are related to residuals in another period)

– Measures violation of independence assumption

21

2

2

1

( )n

i ii

n

ii

e eD

e

Should be close to 2.

If not, examine the model for autocorrelation.

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Ch 4 : Demand Estimation

Residual Analysis for IndependenceResidual Analysis for Independence

Not Independent

Independent

e e

TimeTime

Residual is Plotted Against Time to Detect Any Autocorrelation

No Particular PatternCyclical Pattern

Graphical Approach

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Ch 4 : Demand Estimation

Accept H0

(no autocorrelation)

Using the Durbin-Watson StatisticUsing the Durbin-Watson Statistic

: No autocorrelation (error terms are independent)

: There is autocorrelation (error terms are not)

0H

1H

0 42dL 4-dLdU 4-dU

Reject H0

(positive autocorrelation)

Inconclusive Reject H0

(negative autocorrelation)

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Ch 4 : Demand Estimation

Steps in Demand Estimation

Model Specification: Identify Variables Collect Data Specify Functional Form Estimate Function Test the Results

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Ch 4 : Demand Estimation

Functional Form Specifications

Linear Function:

Power Function:

0 1 2 3 4X X YQ a a P a I a N a P e

1 2( )( )b bX X YQ a P P

Estimation Format:

1 2ln ln ln lnX X YQ a b P b P

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Ch 4 : Demand Estimation

Dummy-Variable Models

When the explanatory variables are qualitative in nature, these are known as dummy variables. These can also defined as indicators variables, binary variables, categorical variables, and dichotomous variables such as variable D in the following equation:

eDcIcPccQ xx ......3210

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Ch 4 : Demand Estimation

Dummy-Variable Models

Categorical Explanatory Variable with 2 or More Levels

Yes or No, On or Off, Male or Female,

Use Dummy-Variables (Coded as 0 or 1)

Only Intercepts are Different

Assumes Equal Slopes Across Categories

Regression Model Has Same Form

Can the dependent variable be dummy?

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Ch 4 : Demand Estimation

0 1 1 2 0 1 1ˆ (0)i i iY b b X b b b X

0 1 1 2 0 2 1 1ˆ (1) ( )i i iY b b X b b b b X

Dummy-Variable ModelsDummy-Variable Models

Given:

Y = Assessed Value of House

X1 = Square Footage of House

X2 = Desirability of Neighbourhood =

Desirable (X2 = 1)

Undesirable (X2 = 0)

0 if undesirable 1 if desirable

0 1 1 2 2i i iY b b X b X

Same slopes

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Ch 4 : Demand Estimation

Simple and Multiple Regression Compared: Example

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Ch 4 : Demand Estimation

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Ch 4 : Demand Estimation

Regression Analysis in Practice

Suppose we have an Employment (Labor Demand) Function as follows:

N=Constant+K+W+AD+P+WT N: employees in employment K: capital accumulation W: value of real wages AD: aggregate deficit P: effect of world manufacturing exports on

employment WT: the deviation of world trade from trend.

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Ch 4 : Demand Estimation

Output by Microfit v4.0w

Ordinary Least Squares Estimation ******************************************************************************* Dependent variable is LOGN 39 observations used for estimation from 1956 to 1994 ******************************************************************************* Regressor Coefficient Standard Error T-Ratio[Prob] CON 4.9921 .98407 5.0729[.000] LOGK .040394 .012998 3.1078[.004] LOGW .024737 .010982 2.2526[.032] AD -.9174E-7 .1587E-6 .57798[.567] LOGP .026977 .0099796 2.7032[.011] LOGWT -.053944 .024279 2.2219[.034] ******************************************************************************* R-Squared .82476 F-statistic F( 6, 33) 20.8432[.000] R-Bar-Squared .78519 S.E. of Regression .012467 Residual Sum of Squares .0048181 Mean of Dependent Variable 10.0098 S.D. of Dependent Variable .026899 Maximum of Log-likelihood 120.1407 DW-statistic 1.8538 *******************************************************************************

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Ch 4 : Demand Estimation Diagnostic Tests

******************************************************************************* * Test Statistics * LM Version * F Version * ******************************************************************************* * * * * * A:Serial Correlation *CHI-SQ( 1)= .051656[.820]*F(1,30)=.039788[.843]** * * * * B:Functional Form *CHI-SQ( 1)= .056872[.812]*F(1,30)=.043812[.836]* * * * * * C:Normality *CHI-SQ( 2)= 1.2819[.527]* Not applicable * * * * * * D:Heteroscedasticity *CHI-SQ( 1)= 1.0065[.316]*F( 1,37)=.98022[.329]* *******************************************************************************  A:Lagrange multiplier test of residual serial correlation B:Ramsey's RESET test using the square of the fitted values C:Based on a test of skewness and kurtosis of residuals D:Based on the regression of squared residuals on squared fitted values

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Ch 4 : Demand Estimation

Dependent Variable: LOGNExplanatory Variables  

CON4.9921(5.07)

    

LOGK 0.40394

(3.10)    

LOGW0.0247(2.25)

AD-0.9174(-0.577)

LOGP0.0269(2.70)

LOGWT-0.0539(-2.22)

R2 0.87

0.83

DW 2.16

SER 0.021

X2SC .05165[.820]

X2FF 05687[.812]

X2NORM 1.2819[.527]

X2HET 1.0065[.316]

R2 bar

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Ch 4 : Demand Estimation

Interpretationt-test (individual significance)t-test (individual significance)Let’s first see the significance of each variable;n=39k=6 and hence d.f.=39-6=33=0.05 (our confidence level is 95%). With =0.05 and d.f.=33, ttab=2.045

Our Hypothesis are:

Ho:s=0 (not significant)

H1: s0 (significant)

 This is t- distribution and using this distribution, you can decide whether individual t-values (calculated or estimated) of the existing variables are significant or not according to the tabulated t-values as appears in the fig above.

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Ch 4 : Demand Estimation

F-test (overall significance)F-test (overall significance) 

Our result is F(6,33)=20.8432k-1=5 and n-k=33= 0.05 (our confidence level is 95%). With = 0.05 and F(6,33), the

Ftab=2.34

  Our hypothesis are

Ho:R2s=0 (not significant)

H1: R20 (significant)

 

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Ch 4 : Demand Estimation

Diagnostic Tests:

Serial Correlation: Ho:=0(existence of autocorrelation )

H1:0 (no autocorrelation)

 Since CHI-SQ(1)=0.051656< X2=3.841, we reject Ho that

estimate regression does not have first order serial correlation or autocorrelation.

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Ch 4 : Demand Estimation

Functional Form: Ho:=0 (existence misspecification)

H1: 0 (no of misspecification)

 The estimated LM version of CHI-SQ is 0.0568721 and with = 0.05 the tabular value is X2=3.841. Because CHI-SQ (1)=0.0568721< X2=3.841, then we reject the null hypothesis that there is functional misspecification.

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Ch 4 : Demand Estimation

Normality:

Ho:ut=0 (residuals are not normally distributed)

H1:ut0(residuals are normally distributed)

  Our estimated result of LM version

for normality is CHI-SQ(2)=1.28191, and the tabular value with 2 restrictions with = 0.05 is X2=5.991.

Since CHI-SQ(2)=1.28191< X2=5.991, the test result shows that the null hypothesis of normality of the residuals is accepted.

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Ch 4 : Demand Estimation

Heteroscedasticity: Ho:yt

2=2 (heteroscedasticity) H1: yt

22(homoscedasticity)  LM version of our result for

the heteroscedasticity is CHI-SQ(1)=1.00651 and table critical value with 1 restriction with = 0.05 is X2=3.841. Since CHI-SQ(1)=1.00651< X2=3.841, we accept the null hypothesis that error term is constant for all the independent variables.

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Ch 4 : Demand Estimation

The EndThe End

Thanks