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Everyday is a new beginning in life. Every moment is a time for self vigilance.

Everyday is a new beginning in life. Every moment is a time for self vigilance. . Simple Linear Regression. Scatterplot Regression equation Correlation.

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Everyday is a new beginning in life. Every moment is a time for self vigilance.

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  1. Everyday is a new beginning in life. Every moment is a time for self vigilance.

  2. Simple Linear Regression Scatterplot Regression equation Correlation

  3.  A company markets and repairs small computers. How fast (Time) an electronic component (Computer Unit) can be repaired is very important to the efficiency of the company. The Variables in this example are: Timeand Units. Example: Computer Repair

  4. Humm… How long will it take me to repair this unit? Goal: to predict the length of repair Time for a given number of computerUnits

  5. Computer Repair Data

  6. Graphical Summary of Two Quantitative Variable Scatterplot of response variable against explanatory variable • What is the overall (average) pattern? • What is the direction of the pattern? • How much do data points vary from the overall (average) pattern? • Any potential outliers?

  7. Time is Linearly related with computer Units. (The length of) Time is Increasingas (the number of) Units increases. Data points are closed to the line. No potential outlier. Summary for Computer Repair Data Scatterplot (Time vs Units) Some Simple Conclusions

  8. Numerical Summary of Two Quantitative Variable • Regression equation • Correlation

  9. Review: Math Equation for a Line • Y: the response variable • X: the explanatory variable Y=b0+b1X Y } b1 1 } b0 X

  10. Regression Equation • The regression line models the relationship between X and Y on average. • The math equation of a regression line is called regression equation.

  11. The Predicted Y Value • We use the regression line to estimate the average Y value for a specified X value and use this Y value to predict what Y value we might observe at this X value in the near future. • This predicted Y value, denoted as and pronounced as “y hat,” is the Y value on the regression line. So, Regression equation

  12. The Usage of Regression Equation • Predict the value of Y for a given X value Eg. Wish to predict a lady’s weight by her height. ** What is X? Y? ** Suppose b0 = -205 and b1 = 5: ** For ladies with HT of 60”, their WT will be predicted as b0+b1x60=95 pounds, the (estimated) average WT of all ladies with HT of 60’’.

  13. The Usage of Regression Equation Eg. How long will it take to repair 3 computer units? ** Suppose b0= 4.16 and b1=15.51: ** the predicted time = 4.16+15.51x3 = 50.69 **  It will take about 50.69 minutes.

  14. Examples of the Predicted Y • The predicted WT of a given HT • The predicted repair time of a given # of units

  15. The Limitation of the Regression Equation • The regression equation cannot be used to predict Y value for the X values which are (far) beyond the range in which data are observed. Eg. Given HT of 40”, the regression equation will give us WT of -205+5x40 = -5 pounds!!

  16. The Unpredicted Part • The value is the part the regression equation (model) cannot catch, and it is called “residual.”

  17. residual {

  18. Correlation between X and Y • X and Y might be related to each other in many ways: linear or curved.

  19. Examples of Different Levels of Correlation r = .71 Median Linearity r = .98 Strong Linearity

  20. Examples of Different Levels of Correlation r = .00 Nearly Curved r = -.09 Nearly Uncorrelated

  21. Correlation Coefficient of X and Y • A measurement of the strength of the “LINEAR” association between X and Y • Sx: the standard deviation of the data values in X, Sy: the standard deviation of the data values in Y; the correlation coefficient of X and Y is:

  22. Correlation Coefficient of X and Y • -1< r < 1 • The magnitude of r measures the strength of the linear association of X and Y, which is the overall closeness of the points to a line. • The sign of r indicate the direction of the association: “-”  negative association “+”  positive association **visit the previous 4 plots again

  23. Correlation Coefficient • The value r is almost 0  the best line to fit the data points is exactly horizontal  the value of X won’t change our prediction on Y • The value r is almost 1  A line fits the data points almost perfectly.

  24. Correlation does not Prove Causation Four Ways to interpret an observed association: • Causation • There might be causation, but other variables contribute as well • The association is explained by how other variables affect X and Y • Y is causing a change in X

  25. Table for Computing Mean, St. Deviation, and Corr. Coef.

  26. Example: Computer Repair Time

  27. Exercise (1) Fill the following table, then compute the mean and st. deviation of Y and X (2) Compute the corr. coef. of Y and X (3) Draw a scatterplot

  28. The Influence of Outliers • The slope becomes larger (toward the outlier) • The size of r becomes smaller

  29. The Influence of Outliers • The slope becomes clear (toward outliers) • The size of r becomes larger (more linear: 0.1590.935)

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