Download - Bba 3274 qm week 6 part 1 regression models
Forecasting andForecasting andRegression ModelsRegression Models
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Forecasting andForecasting andRegression ModelsRegression Models
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BBA3274 / DBS1084 QUANTITATIVE METHODS for BUSINESSBBA3274 / DBS1084 QUANTITATIVE METHODS for BUSINESS
byStephen Ong
Visiting Fellow, Birmingham City University Business School, UK
Visiting Professor, Shenzhen University
Today’s Overview Today’s Overview
Learning ObjectivesLearning Objectives
1.1. Identify variables and use them in a regression model.Identify variables and use them in a regression model.2.2. Develop simple linear regression equations. from sample data and Develop simple linear regression equations. from sample data and
interpret the slope and intercept.interpret the slope and intercept.3.3. Compute the coefficient of determination and the coefficient of Compute the coefficient of determination and the coefficient of
correlation and interpret their meanings.correlation and interpret their meanings.4.4. Interpret the Interpret the FF-test in a linear regression model.-test in a linear regression model.5.5. List the assumptions used in regression and use residual plots to List the assumptions used in regression and use residual plots to
identify problems.identify problems.6.6. Develop a multiple regression model and use it for prediction Develop a multiple regression model and use it for prediction
purposes.purposes.7.7. Use dummy variables to model categorical data.Use dummy variables to model categorical data.8.8. Determine which variables should be included in a multiple Determine which variables should be included in a multiple
regression model.regression model.9.9. Transform a nonlinear function into a linear one for use in regression.Transform a nonlinear function into a linear one for use in regression.10.10. Understand and avoid common mistakes made in the use of Understand and avoid common mistakes made in the use of
regression analysis.regression analysis.
After completing this lecture, students will be able to:After completing this lecture, students will be able to:
Regression Models : OutlineRegression Models : Outline4.14.1 IntroductionIntroduction4.24.2 Scatter DiagramsScatter Diagrams4.34.3 Simple Linear RegressionSimple Linear Regression4.44.4 Measuring the Fit of the Regression ModelMeasuring the Fit of the Regression Model4.54.5 Using Computer Software for RegressionUsing Computer Software for Regression4.64.6 Assumptions of the Regression ModelAssumptions of the Regression Model4.74.7 Testing the Model for SignificanceTesting the Model for Significance4.84.8 Multiple Regression AnalysisMultiple Regression Analysis4.94.9 Binary or Dummy VariablesBinary or Dummy Variables4.104.10 Model BuildingModel Building4.114.11 Nonlinear Regression Nonlinear Regression 4.124.12 Cautions and Pitfalls in Regression Cautions and Pitfalls in Regression
AnalysisAnalysis
5-5
Regression Regression AnalysisAnalysis
MultipleMultiple RegressionRegression
MovingAverage
Exponential Smoothing
Trend Projections
Decomposition
Delphi Methods
Jury of Executive Opinion
Sales ForceComposite
Consumer Market Survey
Time-Series Time-Series MethodsMethods
Qualitative Qualitative ModelsModels
Causal Causal MethodsMethods
Forecasting ModelsForecasting ModelsForecastiForecasti
ng ng TechniquTechniqu
eses
Figure 5.1
IntroductionIntroduction
Regression analysisRegression analysis is a very valuable tool is a very valuable tool for a manager.for a manager.
Regression can be used to:Regression can be used to: Understand the relationship between variables.Understand the relationship between variables. Predict the value of one variable based on Predict the value of one variable based on
another variable.another variable. Simple linear regression models have only Simple linear regression models have only
two variables.two variables. Multiple regression models have more Multiple regression models have more
variables.variables.
IntroductionIntroduction The variable to be predicted is called the The variable to be predicted is called the
dependent variabledependent variable.. This is sometimes called the This is sometimes called the response response
variable.variable. The value of this variable depends on the The value of this variable depends on the
value of the value of the independent variable.independent variable. This is sometimes called the This is sometimes called the explanatoryexplanatory or or
predictor variable.predictor variable.
IndependIndependent ent
variablevariable
DependeDependent nt
variablevariable
IndependIndependent ent
variablevariable
= +
4-8
Scatter DiagramScatter Diagram A A scatter diagramscatter diagram or or scatter plotscatter plot
is often used to investigate the is often used to investigate the relationship between variables.relationship between variables.
The independent variable is The independent variable is normally plotted on the normally plotted on the XX axis. axis.
The dependent variable is The dependent variable is normally plotted on the normally plotted on the YY axis. axis.
Triple A ConstructionTriple A Construction Triple A Construction renovates old homes.Triple A Construction renovates old homes. Managers have found that the dollar volume of Managers have found that the dollar volume of
renovation work is dependent on the area payroll.renovation work is dependent on the area payroll.
TRIPLE A’S TRIPLE A’S SALESSALES
($100,000s)($100,000s)
LOCAL PAYROLLLOCAL PAYROLL($100,000,000s)($100,000,000s)
66 33
88 44
99 66
55 44
4.54.5 22
9.59.5 55Table 4.1
4-10
Triple A ConstructionTriple A Construction
Figure 4.1
Scatter Diagram of Triple A Construction Company DataScatter Diagram of Triple A Construction Company Data
Simple Linear RegressionSimple Linear Regression
wherewhereYY = dependent variable (response)= dependent variable (response)
XX = independent variable (predictor or = independent variable (predictor or explanatory)explanatory)
00= intercept (value of = intercept (value of YY when when XX = 0) = 0)
11= slope of the regression line = slope of the regression line = random error= random error
Regression models Regression models are used to are used to test if there is a relationship test if there is a relationship between variables.between variables.
There is some There is some random error random error that that cannot be predicted.cannot be predicted. XY 10
Simple Linear RegressionSimple Linear Regression True values for the slope and True values for the slope and
intercept are not known so intercept are not known so they are estimated using they are estimated using sample data.sample data.
XbbY 10 ˆwherewhere
YY = predicted value of = predicted value of YY
bb00 = estimate of = estimate of ββ00, based on , based on sample resultssample results
bb11
= estimate of = estimate of ββ11, based on sample , based on sample resultsresults
^
Triple A ConstructionTriple A Construction
Triple A Construction is trying to Triple A Construction is trying to predict sales based on area payroll.predict sales based on area payroll.
YY = Sales = SalesXX = Area payroll = Area payroll
The line chosen in Figure 4.1 is The line chosen in Figure 4.1 is the one that minimizes the the one that minimizes the errors.errors.Error = (Actual value) – (Predicted value)Error = (Actual value) – (Predicted value)
YYe ˆ
Triple A ConstructionTriple A ConstructionFor the simple linear regression model, the For the simple linear regression model, the values of the intercept and slope can be values of the intercept and slope can be calculated using the formulas below.calculated using the formulas below.
XbbY 10 ˆ
values of (mean) average Xn
XX
values of (mean) average Yn
YY
21 )(
))((
XX
YYXXb
XbYb 10
Triple A ConstructionTriple A Construction
YY XX ((XX – – XX))22 ((XX – – XX)()(YY – – YY))
66 33 (3 – 4)(3 – 4)22 = 1 = 1 (3 – 4)(6 – 7) = 1(3 – 4)(6 – 7) = 1
88 44 (4 – 4)(4 – 4)22 = 0 = 0 (4 – 4)(8 – 7) = 0(4 – 4)(8 – 7) = 0
99 66 (6 – 4)(6 – 4)22 = 4 = 4 (6 – 4)(9 – 7) = 4(6 – 4)(9 – 7) = 4
55 44 (4 – 4)(4 – 4)22 = 0 = 0 (4 – 4)(5 – 7) = 0(4 – 4)(5 – 7) = 0
4.54.5 22 (2 – 4)(2 – 4)22 = 4 = 4 (2 – 4)(4.5 – 7) = 5(2 – 4)(4.5 – 7) = 5
9.59.5 55 (5 – 4)(5 – 4)22 = 1 = 1 (5 – 4)(9.5 – 7) = 2.5(5 – 4)(9.5 – 7) = 2.5
ΣΣYY = 42= 42YY = 42/6 = 7 = 42/6 = 7
ΣΣXX = 24= 24XX = 24/6 = 4 = 24/6 = 4
ΣΣ((XX – – XX))22 = 10= 10 ΣΣ((XX – – XX)()(YY – – YY) ) = 12.5= 12.5
Regression calculations for Triple A ConstructionRegression calculations for Triple A Construction
Triple A ConstructionTriple A Construction
46
246
XX
7642
6Y
Y
25110
51221 .
.)(
))((
XX
YYXXb
24251710 ))(.(XbYb
Regression calculationsRegression calculations
XY 2512 .ˆ ThereforeTherefore
Triple A ConstructionTriple A Construction
46
246
XX
7642
6Y
Y
25110
51221 .
.)(
))((
XX
YYXXb
24251710 ))(.(XbYb
Regression calculationsRegression calculations
XY 2512 .ˆ Therefore
sales = 2 + 1.25(payroll)sales = 2 + 1.25(payroll)If the payroll next If the payroll next year is $600 millionyear is $600 million
000950 $ or 5962512 ,.)(.ˆ Y
Measuring the Fit Measuring the Fit of the Regression Modelof the Regression Model
Regression models can be Regression models can be developed for any variables developed for any variables XX and and Y.Y.
How do we know the model is How do we know the model is actually helpful in predicting actually helpful in predicting YY based on based on XX?? We could just take the average error, but We could just take the average error, but
the positive and negative errors would the positive and negative errors would cancel each other out.cancel each other out.
Three measures of variability Three measures of variability are:are: SSTSST – Total variability about the mean.– Total variability about the mean. SSESSE – Variability about the regression line.– Variability about the regression line. SSRSSR – Total variability that is explained by – Total variability that is explained by
the model.the model.
Measuring the Fit Measuring the Fit of the Regression Modelof the Regression Model
Sum of the squares Sum of the squares total total :: 2)( YYSST
Sum of the squared Sum of the squared errorerror:: 22 )ˆ( YYeSSE
Sum of squares due to Sum of squares due to regressionregression:: 2)ˆ( YYSSR
SSESSRSST
Measuring the Fit Measuring the Fit of the Regression Modelof the Regression Model
YY XX ((YY – – YY))22 YY ((YY – – YY))22 ((YY – – YY))22
66 33 (6 – 7)(6 – 7)22 = 1 = 1 2 + 1.25(3) = 5.752 + 1.25(3) = 5.75 0.06250.0625 1.5631.563
88 44 (8 – 7)(8 – 7)22 = 1 = 1 2 + 1.25(4) = 7.002 + 1.25(4) = 7.00 11 00
99 66 (9 – 7)(9 – 7)22 = 4 = 4 2 + 1.25(6) = 9.502 + 1.25(6) = 9.50 0.250.25 6.256.25
55 44 (5 – 7)(5 – 7)22 = 4 = 4 2 + 1.25(4) = 7.002 + 1.25(4) = 7.00 44 00
4.54.5 22 (4.5 – 7)(4.5 – 7)22 = 6.25 = 6.25 2 + 1.25(2) = 4.502 + 1.25(2) = 4.50 00 6.256.25
9.59.5 55 (9.5 – 7)(9.5 – 7)22 = 6.25 = 6.25 2 + 1.25(5) = 8.252 + 1.25(5) = 8.25 1.56251.5625 1.5631.563
∑∑((YY – – YY))22 = 22.5 = 22.5 ∑∑((YY – – YY))22 = 6.875= 6.875 ∑∑((YY – – YY))22 = 15.625 = 15.625
YY = 7 = 7 SSTSST = 22.5 = 22.5 SSESSE = 6.875= 6.875 SSRSSR = 15.625 = 15.625
^
^^
^^
Table 4.3
Sum of Squares for Triple A Sum of Squares for Triple A ConstructionConstruction
Sum of the squares total
2)( YYSST
Sum of the squared error
22 )ˆ( YYeSSE
Sum of squares due to regression
2)ˆ( YYSSR
An important relationship
SSESSRSST
Measuring the Fit Measuring the Fit of the Regression Modelof the Regression Model
For Triple A ConstructionFor Triple A Construction
SSTSST = 22.5 = 22.5SSESSE = 6.875 = 6.875SSRSSR = 15.625 = 15.625
Measuring the Fit Measuring the Fit of the Regression Modelof the Regression Model
Figure 4.2
Deviations from the Regression Line and from the MeanDeviations from the Regression Line and from the Mean
Coefficient of DeterminationCoefficient of Determination
The proportion of the variability in The proportion of the variability in YY explained by explained by the regression equation is called the the regression equation is called the coefficient coefficient of determination.of determination.
The coefficient of determination is The coefficient of determination is rr22..
SSTSSE
SSTSSR
r 12
69440522
625152 ..
.r
About 69% of the variability in About 69% of the variability in YY is is explained by the equation based on explained by the equation based on payroll (payroll (XX).).
4-24
Correlation CoefficientCorrelation Coefficient The correlation coefficient is an expression of the
strength of the linear relationship. It will always be between +1 and –1. The correlation coefficient is r.
2rr For Triple A For Triple A
Construction:Construction:8333069440 .. r
Four Values of the Four Values of the Correlation CoefficientCorrelation Coefficient
**
*
*(a)(a)
Perfect Perfect PositivePositiveCorrelationCorrelation: : rr = +1 = +1
X
Y
*
* *
*
(c)(c) No No CorrelatioCorrelation: n: rr = 0 = 0
X
Y
* **
** *
* ***
(d)(d)Perfect Perfect Negative Negative Correlation: Correlation:
rr = = ––11
X
Y
***
*
* ***
*(b)(b)
PositivePositiveCorrelationCorrelation: : 0 < 0 < rr < 1 < 1
X
Y
****
*
**
Figure 4.3
4-26
Using Computer Software for Using Computer Software for RegressionRegression
Program 4.1A
Accessing the Regression Option in Excel 2010Accessing the Regression Option in Excel 2010
Using Computer Software for Using Computer Software for RegressionRegression
Program 4.1B
Data Input for Regression in ExcelData Input for Regression in Excel
4-28
Using Computer Software for Using Computer Software for RegressionRegression
Program 4.1C
Excel Output for the Triple A Construction ExampleExcel Output for the Triple A Construction Example
4-29
Assumptions of the Assumptions of the Regression ModelRegression Model
1.1. Errors are independent.Errors are independent.
2.2. Errors are normally distributed.Errors are normally distributed.
3.3. Errors have a mean of zero.Errors have a mean of zero.
4.4. Errors have a constant variance.Errors have a constant variance.
If we make certain assumptions about If we make certain assumptions about the errors in a regression model, we the errors in a regression model, we can perform statistical tests to can perform statistical tests to determine if the model is useful.determine if the model is useful.
A plot of the residuals A plot of the residuals (errors) will often highlight (errors) will often highlight any glaring violations of any glaring violations of the assumption.the assumption.
Residual Plots Residual Plots Pattern of Errors Indicating RandomnessPattern of Errors Indicating Randomness
Figure 4.4A
Err
or
X
4-31
Residual Plots Residual Plots
Nonconstant error varianceNonconstant error variance
Figure 4.4B
Err
or
X
4-32
Residual Plots Residual Plots Errors Indicate Relationship is not LinearErrors Indicate Relationship is not Linear
Figure 4.4C
Err
or
X
Estimating the VarianceEstimating the Variance
Errors are assumed to have a constant Errors are assumed to have a constant variance (variance ( 22), but we usually don’t know ), but we usually don’t know this.this.
It can be estimated using the It can be estimated using the mean mean squared errorsquared error ( (MSEMSE), ), ss2.2.
12
knSSE
MSEs
wherewherenn = number of observations in the sample = number of observations in the samplekk = number of independent variables = number of independent variables
4-34
Estimating the VarianceEstimating the Variance
For Triple A Construction:For Triple A Construction:
718814
87506116
875061
2 ...
kn
SSEMSEs
We can estimate the standard deviation, We can estimate the standard deviation, s.s. This is also called the This is also called the standard error of the standard error of the
estimateestimate or the or the standard deviation of the standard deviation of the regression.regression.
31171881 .. MSEs
4-35
Testing the Model for Testing the Model for SignificanceSignificance
When the sample size is too small, you When the sample size is too small, you can get good values for can get good values for MSEMSE and and rr22 even if there is no relationship between even if there is no relationship between the variables.the variables.
Testing the model for significance Testing the model for significance helps determine if the values are helps determine if the values are meaningful.meaningful.
We do this by performing a statistical We do this by performing a statistical hypothesis test.hypothesis test.
Testing the Model for SignificanceTesting the Model for Significance
We start with the general linear modelWe start with the general linear model
XY 10
If If 11 = 0, the null hypothesis is that there is = 0, the null hypothesis is that there is nono relationship between relationship between XX and and Y.Y.
The alternate hypothesis is that there The alternate hypothesis is that there isis a a linear relationship (linear relationship (11 ≠ 0).≠ 0).
If the null hypothesis can be If the null hypothesis can be rejected, we have proven there rejected, we have proven there is a relationship.is a relationship.
We use the We use the FF statistic for this statistic for this test.test.
4-37
Testing the Model for Testing the Model for SignificanceSignificance
The The FF statistic is based on the statistic is based on the MSEMSE and and MSR:MSR:
kSSR
MSR
wherewherekk = =number of independent variables in number of independent variables in the modelthe model
The The FF statistic statistic is: is:
MSEMSR
F This describes an This describes an FF distribution with: distribution with:
degrees of freedom for the numerator = degrees of freedom for the numerator = dfdf11 = = kk
degrees of freedom for the denominator = degrees of freedom for the denominator = dfdf22 = = nn – – kk – 1 – 1
4-38
Testing the Model for SignificanceTesting the Model for Significance
If there is very little error, the If there is very little error, the MSEMSE would be would be small and the small and the FF--statistic would be large statistic would be large indicating the model is useful.indicating the model is useful.
If the If the FF-statistic is large-statistic is large, the significance , the significance level (level (pp-value) will be low, indicating it is -value) will be low, indicating it is unlikely this would have occurred by unlikely this would have occurred by chance.chance.
So when the So when the FF--value is large, value is large, we can reject we can reject the null hypothesisthe null hypothesis and accept that there is a and accept that there is a linear relationship between linear relationship between XX and and YY and the and the values of the values of the MSEMSE and and rr22 are meaningful. are meaningful.
Steps in a Hypothesis TestSteps in a Hypothesis Test
1.1. Specify null and alternative hypotheses:Specify null and alternative hypotheses:
010 :H
011 :H2.2.Select the level of significance Select the level of significance
((). Common values are 0.01 ). Common values are 0.01 and 0.05.and 0.05.
3.3.Calculate the value of the test Calculate the value of the test statistic using the formula:statistic using the formula:
MSEMSR
F
Steps in a Hypothesis TestSteps in a Hypothesis Test4.4. Make a decision using one of the following Make a decision using one of the following
methods:methods:
a)a) Reject the null hypothesis if the test statistic Reject the null hypothesis if the test statistic is greater than the is greater than the FF-value from the table in -value from the table in Appendix D. Otherwise, do not reject the null Appendix D. Otherwise, do not reject the null hypothesis:hypothesis:
21 ifReject dfdfcalculated FF ,,
kdf 1
12 kndf
b)b) Reject the null hypothesis if the observed Reject the null hypothesis if the observed significance level, or significance level, or pp-value, is less than -value, is less than the level of significance (the level of significance (). Otherwise, do ). Otherwise, do not reject the null hypothesis:not reject the null hypothesis: )( statistictest calculatedvalue- FPp
value- ifReject p
Triple A ConstructionTriple A Construction
Step 1.Step 1.
HH00: : 11 = 0 = 0 (no linear (no linear relationship between relationship between XX and and YY))
HH11: : 11 ≠ 0 ≠ 0 (linear relationship (linear relationship exists between exists between XX and and YY))Step 2.Step 2.
Select Select = 0.05 = 0.05
6250151625015
..
k
SSRMSR
09971881625015
...
MSEMSR
F
Step 3.Step 3.Calculate the value of the test statistic.
Triple A ConstructionTriple A Construction
Step 4.Step 4.Reject the null hypothesis if the test statistic is greater than the F-value in Appendix D.
dfdf11 = = kk = 1 = 1
dfdf22 = = nn – – kk – 1 = 6 – 1 – – 1 = 6 – 1 – 1 = 41 = 4The value of The value of FF associated with a 5% associated with a 5%
level of significance and with degrees level of significance and with degrees of freedom 1 and 4 is found in of freedom 1 and 4 is found in Appendix D.Appendix D.
FF0.05,1,40.05,1,4 = 7.71 = 7.71
FFcalculatedcalculated = 9.09 = 9.09
Reject Reject HH00 because 9.09 > 7.71 because 9.09 > 7.71
F = 7.71
0.05
9.09
Triple A ConstructionTriple A Construction
Figure 4.5
We can conclude there is We can conclude there is a a statistically significant statistically significant relationship relationship between between XX and and Y.Y.
The The rr22 value of 0.69 value of 0.69 means about 69% of the means about 69% of the variability in sales (variability in sales (YY) is ) is explained by local payroll explained by local payroll ((XX).).
4-44
Analysis of Variance Analysis of Variance (ANOVA) Table(ANOVA) Table
When software is used to develop a When software is used to develop a regression model, an regression model, an ANOVA table ANOVA table is is typically created that shows the typically created that shows the observed significance level (observed significance level (pp-value) for -value) for the calculated the calculated FF value. value.
This can be compared to the level of This can be compared to the level of significance (significance () to make a decision.) to make a decision.
DFDF SSSS MSMS FF SIGNIFICANCESIGNIFICANCE
RegressionRegression kk SSRSSR MSRMSR = = SSRSSR//kk MSRMSR//MSEMSE PP((FF > > MSRMSR//MSEMSE))
ResidualResidual nn - - kk - 1 - 1 SSESSE MSEMSE = = SSESSE//((nn - - kk - 1) - 1)
TotalTotal nn - 1 - 1 SSTSST
Table 4.4
4-45
ANOVA for Triple A ConstructionANOVA for Triple A Construction
Because this probability is less than Because this probability is less than 0.05, we reject the null hypothesis of 0.05, we reject the null hypothesis of no linear relationship and conclude no linear relationship and conclude there is a linear relationship between there is a linear relationship between XX and and Y.Y.
Program 4.1C (partial) PP((FF > 9.0909) = 0.0394 > 9.0909) = 0.0394
4-46
Multiple Regression AnalysisMultiple Regression Analysis Multiple regression models are extensions
to the simple linear model and allow the creation of models with more than one independent variable.
YY = = 00 + + 11XX11 + + 22XX22 + … + + … + kkXXkk + + wherewhere
YY = =dependent variable (response variable)dependent variable (response variable)XXii = =iithth independent variable (predictor or independent variable (predictor or explanatory variable)explanatory variable)00 = =intercept (value of intercept (value of YY when all when all XXii = 0)= 0)ii = =coefficient of the coefficient of the iithth independent variable independent variablekk = =number of independent variablesnumber of independent variables ==random errorrandom error
Multiple Regression AnalysisMultiple Regression Analysis
To estimate these values, a To estimate these values, a sample is taken the following sample is taken the following equation developedequation developed
kk XbXbXbbY ...ˆ22110
wherewhere ==predicted value of predicted value of YY
bb00 = = sample intercept (and is an sample intercept (and is an estimate of estimate of 00))bbii ==sample coefficient of the sample coefficient of the iithth variable (and is an estimate of variable (and is an estimate of ii))
Y
4-48
Jenny Wilson RealtyJenny Wilson RealtyJenny Wilson wants to develop a Jenny Wilson wants to develop a model to determine the model to determine the suggested listing price for suggested listing price for houses based on the size and age houses based on the size and age of the house.of the house. 22110
ˆ XbXbbY
wherewhere ==predicted value of dependent predicted value of dependent variable (selling price)variable (selling price)bb00 = =YY intercept interceptXX11 and and XX22 = = value of the two value of the two independent variables (square footage independent variables (square footage and age) respectivelyand age) respectivelybb1 1 andand bb22 = =slopes for slopes for XX11 and and XX22 respectivelyrespectively
Y
She selects a sample of houses that She selects a sample of houses that have sold recently and records the have sold recently and records the data shown in Table 4.5data shown in Table 4.5
4-49
Jenny Wilson Real Estate DataJenny Wilson Real Estate DataSELLING SELLING PRICE ($)PRICE ($)
SQUARE SQUARE FOOTAGEFOOTAGE AGEAGE CONDITIONCONDITION
95,00095,000 1,9261,926 3030 GoodGood
119,000119,000 2,0692,069 4040 ExcellentExcellent
124,800124,800 1,7201,720 3030 ExcellentExcellent
135,000135,000 1,3961,396 1515 GoodGood
142,000142,000 1,7061,706 3232 MintMint
145,000145,000 1,8471,847 3838 MintMint
159,000159,000 1,9501,950 2727 MintMint
165,000165,000 2,3232,323 3030 ExcellentExcellent
182,000182,000 2,2852,285 2626 MintMint
183,000183,000 3,7523,752 3535 GoodGood
200,000200,000 2,3002,300 1818 GoodGood
211,000211,000 2,5252,525 1717 GoodGood
215,000215,000 3,8003,800 4040 ExcellentExcellent
219,000219,000 1,7401,740 1212 MintMintTable 4.5
4-50
Jenny Wilson RealtyJenny Wilson Realty
Program 4.2A
Input Screen for the Jenny Input Screen for the Jenny Wilson Realty Multiple Wilson Realty Multiple Regression ExampleRegression Example
4-51
Jenny Wilson RealtyJenny Wilson Realty
Program 4.2B
Output for the Jenny Wilson Realty Output for the Jenny Wilson Realty Multiple Regression ExampleMultiple Regression Example
Evaluating Multiple Evaluating Multiple Regression ModelsRegression Models
Evaluation is similar to simple Evaluation is similar to simple linear regression models.linear regression models. The The pp-value for the -value for the FF-test and -test and rr22
are interpreted the same.are interpreted the same. The hypothesis is different The hypothesis is different
because there is more than one because there is more than one independent variable.independent variable. The The FF-test is investigating -test is investigating
whether all the coefficients are whether all the coefficients are equal to 0 at the same time.equal to 0 at the same time.
Evaluating Multiple Evaluating Multiple Regression ModelsRegression Models
To determine which To determine which independent variables are independent variables are significant, tests are significant, tests are performed for each variable.performed for each variable.010 :H
011 :H
The test statistic is calculated The test statistic is calculated and if the and if the pp-value is lower than -value is lower than the level of significance (the level of significance (), ), the null hypothesis is rejected.the null hypothesis is rejected.
4-54
Jenny Wilson RealtyJenny Wilson Realty The model is statistically significantThe model is statistically significant
The The pp-value for the -value for the FF-test is 0.002.-test is 0.002. rr22 = 0.6719 so the model explains = 0.6719 so the model explains
about 67% of the variation in selling about 67% of the variation in selling price (price (YY).).
But the But the FF-test is for the entire model and -test is for the entire model and we can’t tell if one or both of the we can’t tell if one or both of the independent variables are significant.independent variables are significant.
By calculating the By calculating the pp-value of each -value of each variable, we can assess the significance of variable, we can assess the significance of the individual variables.the individual variables.
Since the p-value for Since the p-value for XX11 (square footage) (square footage) andand X X22 (age) are both less than the (age) are both less than the significance level of 0.05, both null significance level of 0.05, both null hypotheses can be rejected.hypotheses can be rejected.
Binary or Dummy VariablesBinary or Dummy Variables BinaryBinary (or (or dummydummy or or indicatorindicator) )
variables are special variables variables are special variables created for qualitative data.created for qualitative data.
A dummy variable is assigned a A dummy variable is assigned a value of 1 if a particular condition value of 1 if a particular condition is met and a value of 0 otherwise.is met and a value of 0 otherwise.
The number of dummy variables The number of dummy variables must equal one less than the must equal one less than the number of categories of the number of categories of the qualitative variable.qualitative variable.
4-56
Jenny Wilson RealtyJenny Wilson Realty Jenny believes a better model Jenny believes a better model
can be developed if she can be developed if she includes information about the includes information about the condition of the property.condition of the property.XX33 = 1 if house is in excellent condition= 1 if house is in excellent condition
= 0 otherwise= 0 otherwiseXX44 = 1 if house is in mint condition= 1 if house is in mint condition
= 0 otherwise= 0 otherwise Two dummy variables are used to Two dummy variables are used to
describe the three categories of describe the three categories of condition.condition.
No variable is needed for “good” No variable is needed for “good” condition since if both condition since if both XX33 and and XX44 = 0, = 0, the house must be in good the house must be in good condition.condition.
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Jenny Wilson RealtyJenny Wilson Realty
Program 4.3A
Input Screen for the Jenny Wilson Input Screen for the Jenny Wilson Realty Example with Dummy Realty Example with Dummy VariablesVariables
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Jenny Wilson RealtyJenny Wilson Realty
Program 4.3B
Output for the Jenny Wilson Output for the Jenny Wilson Realty Example with Dummy Realty Example with Dummy VariablesVariables
Model BuildingModel Building The best model is a statistically The best model is a statistically
significant model with a high significant model with a high rr22 and and few variables.few variables.
As more variables are added to the As more variables are added to the model, the model, the rr22-value usually increases.-value usually increases.
For this reason, the For this reason, the adjusted adjusted rr22 value value is often used to determine the is often used to determine the usefulness of an additional variable.usefulness of an additional variable.
The adjusted The adjusted rr22 takes into account the takes into account the number of independent variables in number of independent variables in the model.the model.
Model BuildingModel Building
SSTSSE
SSTSSR
12r
The formula for The formula for rr22
The formula for The formula for adjusted adjusted rr22
)/(SST)/(SSE
11
1 Adjusted 2
n
knr
As the number of variables As the number of variables increases, the adjusted increases, the adjusted rr22 gets gets smaller unless the increase due to smaller unless the increase due to the new variable is large enough the new variable is large enough to offset the change in to offset the change in k.k.
Model BuildingModel Building In general, if a new variable increases the In general, if a new variable increases the
adjusted adjusted rr22, it should probably be included in the , it should probably be included in the model.model.
In some cases, variables contain duplicate In some cases, variables contain duplicate information.information.
When two independent variables are correlated, When two independent variables are correlated, they are said to be they are said to be collinear.collinear.
When more than two independent variables are When more than two independent variables are correlated, correlated, multicollinearitymulticollinearity exists. exists.
When multicollinearity is present, When multicollinearity is present, hypothesis hypothesis tests for the individual coefficients are not valid tests for the individual coefficients are not valid but the model may still be useful.but the model may still be useful.
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Nonlinear RegressionNonlinear Regression In some situations, variables are not In some situations, variables are not
linear.linear. Transformations may be used to turn Transformations may be used to turn
a nonlinear model into a linear model.a nonlinear model into a linear model.
** **
** ** *
Linear relationshipLinear relationship Nonlinear relationshipNonlinear relationship
**** **
****
*
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Colonel MotorsColonel Motors Engineers at Colonel Motors want to
use regression analysis to improve fuel efficiency.
They have been asked to study the impact of weight on miles per gallon (MPG).MPGMPG
WEIGHT WEIGHT (1,000 (1,000 LBS.)LBS.) MPGMPG
WEIGHT WEIGHT (1,000 (1,000 LBS.)LBS.)
1212 4.584.58 2020 3.183.18
1313 4.664.66 2323 2.682.68
1515 4.024.02 2424 2.652.65
1818 2.532.53 3333 1.701.70
1919 3.093.09 3636 1.951.95
1919 3.113.11 4242 1.921.92
Table 4.6
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Colonel MotorsColonel Motors
Figure 4.6A
Linear Model for MPG DataLinear Model for MPG Data
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Colonel MotorsColonel Motors
Program 4.4
This is a useful model with a This is a useful model with a small small FF-test for significance and -test for significance and a good a good rr22 value. value.
Excel Output for Linear Excel Output for Linear Regression Model with MPG Regression Model with MPG DataData
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Colonel MotorsColonel Motors
Figure 4.6B
Nonlinear Model for MPG Nonlinear Model for MPG DataData
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Colonel MotorsColonel Motors
The nonlinear model is a The nonlinear model is a quadratic model.quadratic model.
The easiest way to work with this The easiest way to work with this model is to develop a new model is to develop a new variable.variable.
22 weight)(X
This gives us a model that This gives us a model that can be solved with linear can be solved with linear regression software:regression software:
22110 XbXbbY ˆ
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Colonel MotorsColonel Motors
Program 4.5
A better model with a smaller A better model with a smaller FF--test for significance and a larger test for significance and a larger adjusted adjusted rr22 value value
21 43230879 XXY ...ˆ
Cautions and PitfallsCautions and Pitfalls If the assumptions are not met, the If the assumptions are not met, the
statistical test may not be valid.statistical test may not be valid. Correlation does not necessarily mean Correlation does not necessarily mean
causation.causation. Multicollinearity makes interpreting Multicollinearity makes interpreting
coefficients problematic, but the model may coefficients problematic, but the model may still be good.still be good.
Using a regression model beyond the range Using a regression model beyond the range of of XX is questionable, as the relationship may is questionable, as the relationship may not hold outside the sample data.not hold outside the sample data.
Cautions and PitfallsCautions and Pitfalls AA t t-test for the intercept (-test for the intercept (bb00) may be ) may be
ignored as this point is often outside the ignored as this point is often outside the range of the model.range of the model.
A linear relationship may not be the best A linear relationship may not be the best relationship, even if the relationship, even if the FF-test returns an -test returns an acceptable value.acceptable value.
A nonlinear relationship can exist even if a A nonlinear relationship can exist even if a linear relationship does not.linear relationship does not.
Even though a relationship is statistically Even though a relationship is statistically significant it may not have any practical significant it may not have any practical value.value.
TutorialTutorial
Lab Practical : Spreadsheet Lab Practical : Spreadsheet
1 - 71
Further ReadingFurther Reading
Render, B., Stair Jr.,R.M. & Hanna, M.E. (2013) Quantitative Analysis for Management, Pearson, 11th Edition
Waters, Donald (2007) Quantitative Methods for Business, Prentice Hall, 4th Edition.
Anderson D, Sweeney D, & Williams T. (2006) Quantitative Methods For Business Thompson Higher Education, 10th Ed.
QUESTIONS?QUESTIONS?