商业决策技术课件-10quantitative-methods--Chapter-10-Forec.ppt
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- 商业 决策 技术 课件 10 quantitative methods Chapter Forec
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1、Quantitative Methods For Decision Makers3rd Edition Chapter 10 Forecasting:regressionLearning ObjectivesBy the end of this chapter you should be able to:Understand the principles of simple linear regression Be able to interpret the key statistics from a regression equation Be able to explain the lim
2、itations of regression in business forecasting Be aware of the extensions to the basic regression modelCorrelation vs.RegressionA scatter diagram can be used to show the relationship between two variablesCorrelation analysis is used to measure strength of the association(linear relationship)between
3、two variables Correlation is only concerned with strength of the relationship No causal effect is implied with correlation22)()()()(yyxxyyxxrnyynxxnyxxyr/)(/)(/)(2222Types of RelationshipsYXYXYYXXLinear relationshipsCurvilinear relationshipsTypes of RelationshipsYXYXYYXXStrong relationshipsWeak rela
4、tionships(continued)Types of RelationshipsYXYXNo relationship(continued)Introduction to Regression Analysis Regression analysis is used to:Predict the value of a dependent variable based on the value of at least one independent variable Explain the impact of changes in an independent variable on the
5、 dependent variableDependent variable:the variable we wish to predict or explainIndependent variable:the variable used to explain the dependent variableSimple Linear Regression Model Only one independent variable,X Relationship between X and Y is described by a linear function Changes in Y are assum
6、ed to be caused by changes in Xii10iXYLinear componentSimple Linear Regression ModelPopulation Y intercept Population SlopeCoefficient Random Error termDependent VariableIndependent VariableRandom Error component(continued)Random Error for this Xi valueYXObserved Value of Y for XiPredicted Value of
7、Y for Xi ii10iXYXiSlope=1Intercept=0 iSimple Linear Regression Modeli10iXbbYThe simple linear regression equation provides an estimate of the population regression lineSimple Linear Regression Equation(Prediction Line)Estimate of the regression interceptEstimate of the regression slopeEstimated (or
8、predicted)Y value for observation iValue of X for observation iLeast Squares Method b0 and b1 are obtained by finding the values of b0 and b1 that minimize the sum of the squared differences between Yi and :2i10i2ii)Xb(b(Ymin)Y(YminYnxbnybnxxnyxxyb 10221/)(/)(b0 is the estimated average value of Y w
9、hen the value of X is zero b1 is the estimated change in the average value of Y as a result of a one-unit change in XInterpretation of the Slope and the InterceptUsing the regression equation Forecasting 1.is not a guaranteed outcome 2.does not guarantee the relationship will continue unchanged in t
10、he future 3.interpolation not extrapolation Performance evaluationSimple Linear Regression Example A real estate agent wishes to examine the relationship between the selling price of a home and its size(measured in square feet)A random sample of 10 houses is selected Dependent variable(Y)=house pric
11、e in$1000s Independent variable(X)=square feetSample Data for House Price ModelHouse Price in$1000s(Y)Square Feet(X)2451400312160027917003081875199110021915504052350324245031914252551700Graphical Presentation House price model:scatter plotExcel OutputRegression StatisticsMultiple R0.76211R Square0.5
12、8082Adjusted R Square0.52842Standard Error41.33032Observations10ANOVA dfSSMSFSignificance FRegression118934.934818934.934811.08480.01039Residual813665.56521708.1957Total932600.5000 CoefficientsStandard Errort StatP-valueLower 95%Upper 95%Intercept98.2483358.033481.692960.12892-35.57720232.07386Squar
13、e Feet0.109770.032973.329380.010390.033740.18580The regression equation is:feet)(square 0.10977 98.24833 price houseGraphical Presentation House price model:scatter plot and regression linefeet)(square 0.10977 98.24833 price houseSlope=0.10977Intercept=98.248 Interpretation of the Intercept,b0 b0 is
14、 the estimated average value of Y when the value of X is zero Here,no houses had 0 square feet,so b0=98.24833 just indicates that,for houses within the range of sizes observed,$98,248.33 is the portion of the house price not explained by square feetfeet)(square 0.10977 98.24833 price houseInterpreta
15、tion of the Slope Coefficient,b1 b1 measures the estimated change in the average value of Y as a result of a one-unit change in X Here,b1=.10977 tells us that the average value of a house increases by.10977($1000)=$109.77,on average,for each additional one square foot of sizefeet)(square 0.10977 98.
16、24833 price house317.850)0.1098(200 98.25(sq.ft.)0.1098 98.25 price housePredict the price for a house with 2000 square feet:The predicted price for a house with 2000 square feet is 317.85($1,000s)=$317,850Predictions using Regression AnalysisInterpolation vs.Extrapolation When using a regression mo
17、del for prediction,only predict within the relevant range of dataRelevant range for interpolationDo not try to extrapolate beyond the range of observed XsFurther statistical evaluation of the regression equation Total variation is made up of two parts:SSE SSR SSTTotal Sum of SquaresRegression Sum of
18、 SquaresError Sum of Squares2i)YY(SST2ii)YY(SSE2i)YY(SSRwhere:=Average value of the dependent variableYi=Observed values of the dependent variable i =Predicted value of Y for the given Xi valueYY SST=total sum of squares Measures the variation of the Yi values around their mean Y SSR=regression sum
19、of squares Explained variation attributable to the relationship between X and Y SSE=error sum of squares Variation attributable to factors other than the relationship between X and Y(continued)Measures of Variation(continued)XiYXYiSST=(Yi-Y)2SSE=(Yi-Yi)2 SSR=(Yi-Y)2 _Y YY_Y Measures of Variation The
20、 coefficient of determination is the portion of the total variation in the dependent variable that is explained by variation in the independent variable The coefficient of determination is also called r-squared and is denoted as r2Coefficient of Determination,r21r02note:squares of sum total squares
21、of sum regressionSSTSSRr2r2=1Examples of Approximate r2 ValuesYXYXr2=1r2=1Perfect linear relationship between X and Y:100%of the variation in Y is explained by variation in XExamples of Approximate r2 ValuesYXYX0 r2 1Weaker linear relationships between X and Y:Some but not all of the variation in Y
22、is explained by variation in XExamples of Approximate r2 Valuesr2=0No linear relationship between X and Y:The value of Y does not depend on X.(None of the variation in Y is explained by variation in X)YXr2=0Excel OutputRegression StatisticsMultiple R0.76211R Square0.58082Adjusted R Square0.52842Stan
23、dard Error41.33032Observations10ANOVA dfSSMSFSignificance FRegression118934.934818934.934811.08480.01039Residual813665.56521708.1957Total932600.5000 CoefficientsStandard Errort StatP-valueLower 95%Upper 95%Intercept98.2483358.033481.692960.12892-35.57720232.07386Square Feet0.109770.032973.329380.010
24、390.033740.1858058.08%of the variation in house prices is explained by variation in square feet0.5808232600.500018934.9348SSTSSRr2Standard Error of Estimate The standard deviation of the variation of observations around the regression line is estimated by2n)YY(2nSSESn1i2iiYXWhereSSE =error sum of sq
25、uares n=sample sizeExcel OutputRegression StatisticsMultiple R0.76211R Square0.58082Adjusted R Square0.52842Standard Error41.33032Observations10ANOVA dfSSMSFSignificance FRegression118934.934818934.934811.08480.01039Residual813665.56521708.1957Total932600.5000 CoefficientsStandard Errort StatP-value
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