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15.7 Curve Fitting. With statistical applications, exact relationships may not exist  Often an average relationship is used Regression Analysis: a collection.

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Presentation on theme: "15.7 Curve Fitting. With statistical applications, exact relationships may not exist  Often an average relationship is used Regression Analysis: a collection."— Presentation transcript:

1 15.7 Curve Fitting

2 With statistical applications, exact relationships may not exist  Often an average relationship is used Regression Analysis: a collection of methods by which estimates are made between 2 variables Correlation Analysis: tells the degree to which the variables are related Scatter plot: good tool for recognizing & analyzing relationships independent variable dependent variable (prediction to be made) (the basis for the prediction)

3 Ex 1) A college admissions committee wishes to predict students’ first- year math averages from their math SAT scores. The data was plotted: The points are NOT on a clear straight line. But what can this plot tell us? - In general, higher SAT scores correspond to higher grades - Looks like a positive linear (or direct) relationship * Our graphing calculator can plot scatter plots Remember to identify which variable is independent & which is dependent. * Once we have a scatter plot, we identify the line or curve that “best fits” the points

4 Some examples:

5 Statisticians use the method of least squares to obtain a linear regression equation y = a + bx *the sum of all the values  y is zero *the sum of the squares of the values  y is as small as possible *On Calculator  2 nd 0 (CATALOG)  Scroll down to Diagnostic On  Enter, Enter

6 Plot using a scatter plot STAT  1: Edit…L 1 = enter data for speed (independent) L 2 = enter data for stride rate (dependent) 2 nd Y= (STAT PLOT)  1: Enter WINDOW GRAPH  looks like a line! Ex 2) A runner’s stride rate is related to his or her speed. Speed (ft/s)15.8616.8817.5018.6219.9721.0622.11 Stride rate (steps/s)3.053.123.173.253.363.463.55

7 Do a “linear regression” STAT  CALC  8: Lin Reg (a+bx) Xlist: L 1 Ylist: L 2 Calculate enter  y = 1.766 +.080x What is r? It tells us “how good” our regression model fits. The closer it is to 1 (for direct linear) or –1 (for inverse linear), the better our model fits the data.  correlation coefficient

8 Ex 3) Match the scatter diagrams with the correlation coefficients r = 0.3, r = 0.9, r = –0.4, r = –0.75 a) b) c) r = 0.9 rising line fits points well r = –0.4 falling line fits points but not closely r = 0.3 rising line fits points but not closely A straight line is not always the best way to describe a relationship. The relationship may be described as curvilinear. Exponential ExpReg y = a  b x Logarithmic LnReg y = a + b lnx Power PwrReg y = a  x b All of these can be found in the STAT  CALC menu

9 Ex 4) An accountant presents the data in the table about a company’s profits in thousands of dollars for 7 years after a management reorganization. YearProfits 1150 2210 3348 4490 5660 6872 71400 Scatter plot  STAT  1:EDIT  Enter data in L 1 & L 2 WINDOWGRAPH Let’s try an exponential regression STAT  CALC  0: ExpReg Looks exponential  y = 107.208 (1.439) x Now use this model to predict the profit for year 8. y = 107.208 (1.439) 8 = 1971.1  $1,971,000 Typo 

10 Homework #1507 Pg 842 #4 – 7, 9 – 12, 14, 17 – 26, 31, 38 (use your graphing calculator for all scatter plots then make a sketch of what your calculator gives)


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