Holt McDougal Algebra 1 4-8 Line of Best Fit What does this have to do with Math?

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Presentation transcript:

Holt McDougal Algebra Line of Best Fit What does this have to do with Math?

Holt McDougal Algebra Line of Best Fit Determine a line of best fit for a set of linear data. Objectives residual least-squares line line of best fit Vocabulary

Holt McDougal Algebra Line of Best Fit Real Data Blue Trendline Red Trendline

Holt McDougal Algebra Line of Best Fit A residual is the vertical distance between a data point and a line of fit.

Holt McDougal Algebra Line of Best Fit Example1: Calculating Residuals REAL DATA · Blue Trendline y = 2x + 2 Red Trendline y = x + 4 For each line: Find the sum of the squares of the residuals. Which line is a better fit?

Holt McDougal Algebra Line of Best Fit Find the sum of the squares of the residuals. Find the residuals Red Trendline y = x + 4 Sum of squared residuals: (2) 2 + (–1) 2 + (–1) 2 + (1) = 7

Holt McDougal Algebra Line of Best Fit Find the sum of the squares of the residuals. Find the residuals Blue Trendline y = 2x + 2 Sum of squared residuals: (3) 2 + (–1) 2 + (–2) 2 + (-1) = 15 The line y = x + 4 is a better fit.

Holt McDougal Algebra Line of Best Fit Which line is a better fit? The Red trendline is a better fit. Blue Trendline15 Red Trendline7 Sum of the squares of the residuals:

Holt McDougal Algebra Line of Best Fit A residual is the vertical distance between a real data point and a line of fit(or trendline). A line of best fit is the line that comes closest to all of the points in the data set, using a given process.

Holt McDougal Algebra Line of Best Fit Check It Out! Example 1 Two lines of fit for this data are For each line, find the sum of the squares of the residuals. Which line is a better fit? y = x + 6 and y = -x + 8

Holt McDougal Algebra Line of Best Fit Check It Out! Example 1 Continued Find the residuals. Sum of squared residuals: 2 1 y = – x + 6 : (–2) 2 + (2) 2 + (–2) 2 + (2) = 16

Holt McDougal Algebra Line of Best Fit Check It Out! Example 1 Continued Find the residuals. Sum of squared residuals: y = –x + 8: y = The line x + 6 is a better fit (–3) 2 + (2) 2 + (–1) 2 + (4) = 30

Holt McDougal Algebra Line of Best Fit Homework on Weebly - Review the presentation of today´s lesson - Complete the exercises for Lesson 4-8 of the worksheet - Your Weekly Writing Entry is posted on Padlet: it is due on Friday.

Holt McDougal Algebra Line of Best Fit The least-squares line for a data set is the line of fit for which the sum of the squares of the residuals is as small as possible. Linear regression is a process of finding the least-squares line.

Holt McDougal Algebra Line of Best Fit Graphing Calculator Groups WORKSHEET

Holt McDougal Algebra Line of Best Fit Example 2: Finding the Least-Squares Line StatePopulation (millions) Representati ves AL4.57 AK0.61 AZ5.18 AR2.74 CA CO4.37 The table shows populations and numbers of U.S. Representatives for several states in the year Find the least squares regression line

Holt McDougal Algebra Line of Best Fit A. Find an equation for a line of best fit. y = 1.56x Example 2 Continued Use your calculator. To enter the data, press STAT and select 1:Edit. Enter the population in the L1 column and the number of representatives in the L2 column. Then press STAT and choose CALC. Choose 4:LinReg(ax+b) and press ENTER. An equation for a line of best fit is y ≈ 1.56x

Holt McDougal Algebra Line of Best Fit Exercise 2 Worksheet The table shows the prices and the lengths in yards of several balls of yarn at Knit Mart. a. Find an equation for a line of best fit. y ≈ 0.04x

Holt McDougal Algebra Line of Best Fit The correlation coefficient is a number r, where -1 ≤ r ≤ 1, that describes how closely the points in a scatter plot cluster around a line of best fit. r-values close to 1 or –1 indicate a very strong correlation. The closer r is to 0, the weaker the correlation. Helpful Hint Exercises 3-6 Worksheet

Holt McDougal Algebra Line of Best Fit Additional Example 3: Correlation Coefficient YearPoints Allowed Games Won The table shows a relationship between points allowed and games won by a football team over eight seasons.

Holt McDougal Algebra Line of Best Fit Find an equation for a line of best fit. How well does the line represent the data? An equation for a line of best fit is y ≈ –0.02x The value of r is about –0.91, which represents the data very well. Additional Example 3 Continued Use your calculator. Enter the data into the lists L1 and L2. Then press STAT and choose CALC. Choose 4:LinReg(ax+b) and press ENTER.

Holt McDougal Algebra Line of Best Fit Check It Out! Example 3 Kylie and Marcus designed a quiz to measure how much information adults retain after leaving school. The table below shows the quiz scores of several adults, matched with the number of years each person had been out of school. Find an equation for a line of best fit. How well does the line represent the data?.

Holt McDougal Algebra Line of Best Fit Check It Out! Example 3 Continued An equation for a line of best fit is y ≈ –2.74x The value of r is about –0.88, which represents the data very well.

Holt McDougal Algebra Line of Best Fit Check It Out! Example 4 Eight adults were surveyed about their education and earnings. The table shows the survey results. The equation of the least-squares line for the data is y ≈ 5.59x and r ≈ Discuss correlation and causation for the data set. There is a strong positive correlation. There is a likely cause-and-effect relationship (more education often contributes to higher earnings).