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Regression Analysis

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Regression Analysis Deterministic model No chance of an error in calculating y for a given x Probabilistic model chance of an error First order linear probabilistic model – PowerPoint PPT presentation

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Title: Regression Analysis


1
Regression Analysis
  • Deterministic model
  • No chance of an error in calculating y for a
    given x
  • Probabilistic model
  • chance of an error
  • First order linear probabilistic model
  • ?0 ?x ?

2
Least Square Method
  • Minimizes the sum of squared differences between
    observed and values from the regression line.
  • ? slope of the line and
  • Ssxy? SSx
  • Look for the short cut formula on page 731
  • ?o y intercept y- - ?x-
  • Residual yi - Y

3
Regression continued
  • R2 SSR/SST
  • Proportion of the total variation in Y explained
    by the regression line
  • R2 1, all scatter points on the regression line
  • R2 0 no scatter point on the regression line
  • Square root of R2 is called coefficient of
    correlation

4
Regression continued
  • When Coefficient of correlation is positive,
    there is direct relationship between variables
  • When Coefficient of correlation is negative, y
    value increases when x decrease and vice versa
  • When Coefficient of correlation is zero, there is
    no linear relationship.

5
Regression
  • SSTSSRSSE
  • Formulae for predicted interval and expected
    interval are on page 756
  • To infer on the population coefficient of
    correlation, use t -test, formula on page 761
  • To find t-value from t-table, you must know
  • degree of freedom
  • the level of significance
  • For two tailed test, divide the level of
    significance by 2.

6
Assessing the Model
  • Standard error of the estimate
  • Divide the standard error of the estimate by the
    average of y
  • Smaller its value, better the fit
  • Coefficient of determination
  • Closer its value to 1, better the fit
  • R2 1, all scatter points fit on the
    regression/least square line
  • R2 0, non of the scatter points lie on the
    regression line.
  • Explains the proportion of the total deviation
    explained by the regression line.

7
Inference on Slope
  • Apply t-test because
  • standard deviation of the population is unknown
  • H0? 0
  • Ha ?? 0
  • t (? - ?)/S?
  • S? is the standard deviation of the slope and
    Se /?SSx
  • use level of significance and the degree of
    freedom (n-2) to derive a conclusion based on
    the data.
  • Predicting a value of Y for a given value of x
  • use the formula on page 756 or use the Excel
    print-out under PI
  • Estimating expected value
  • Use the formula on page 756 or use the computer
    print out under confidence interval.
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