QUESTION IMAGE
Question
use the given data to find the equation of the regression line. examine the scatterplot and identify a characteristic of the data that is ignored by the regression line. x 10 9 12 9 10 13 7 4 13 6 5 y 7.19 6.46 12.72 6.85 7.67 0.79 6.05 5.30 0.20 6.17 5.55 create a scatterplot of the data. choose the correct graph below. find the equation of the regression line. y = □ + □x (round the y - intercept two decimal places as needed. round the slope to three decimal places as needed.)
Step1: Calculate the means of \(x\) and \(y\)
Let \(x_1,x_2,\cdots,x_{n}\) and \(y_1,y_2,\cdots,y_{n}\) be the data - points. Here \(n = 11\).
\(\bar{x}=\frac{\sum_{i = 1}^{n}x_{i}}{n}\), \(\sum_{i=1}^{11}x_{i}=10 + 9+12 + 9+10+13+7+4+13+6+5=98\), so \(\bar{x}=\frac{98}{11}\approx8.91\).
\(\bar{y}=\frac{\sum_{i = 1}^{n}y_{i}}{n}\), \(\sum_{i = 1}^{11}y_{i}=7.19+6.46+12.72+6.85+7.67+0.79+6.05+5.30+0.20+6.17+5.55 = 65.95\), so \(\bar{y}=\frac{65.95}{11}\approx5.995\).
Step2: Calculate the slope \(b_1\)
The formula for the slope \(b_1=\frac{\sum_{i = 1}^{n}(x_{i}-\bar{x})(y_{i}-\bar{y})}{\sum_{i = 1}^{n}(x_{i}-\bar{x})^{2}}\).
First, calculate \((x_{i}-\bar{x})(y_{i}-\bar{y})\) and \((x_{i}-\bar{x})^{2}\) for each \(i\):
| \(x_{i}\) | \(y_{i}\) | \(x_{i}-\bar{x}\) | \(y_{i}-\bar{y}\) | \((x_{i}-\bar{x})(y_{i}-\bar{y})\) | \((x_{i}-\bar{x})^{2}\) |
|---|---|---|---|---|---|
| 9 | 6.46 | \(9 - 8.91 = 0.09\) | \(6.46 - 5.995=0.465\) | \(0.09\times0.465 = 0.04185\) | \(0.09^{2}=0.0081\) |
| 12 | 12.72 | \(12 - 8.91 = 3.09\) | \(12.72 - 5.995 = 6.725\) | \(3.09\times6.725=20.78025\) | \(3.09^{2}=9.5481\) |
| 9 | 6.85 | \(9 - 8.91 = 0.09\) | \(6.85 - 5.995 = 0.855\) | \(0.09\times0.855 = 0.07695\) | \(0.09^{2}=0.0081\) |
| 10 | 7.67 | \(10 - 8.91 = 1.09\) | \(7.67 - 5.995 = 1.675\) | \(1.09\times1.675 = 1.82575\) | \(1.09^{2}=1.1881\) |
| 13 | 0.79 | \(13 - 8.91 = 4.09\) | \(0.79 - 5.995=-5.205\) | \(4.09\times(-5.205)=-21.28845\) | \(4.09^{2}=16.7281\) |
| 7 | 6.05 | \(7 - 8.91=-1.91\) | \(6.05 - 5.995 = 0.055\) | \((-1.91)\times0.055=-0.10505\) | \((-1.91)^{2}=3.6481\) |
| 4 | 5.30 | \(4 - 8.91=-4.91\) | \(5.30 - 5.995=-0.695\) | \((-4.91)\times(-0.695)=3.41245\) | \((-4.91)^{2}=24.1081\) |
| 13 | 0.20 | \(13 - 8.91 = 4.09\) | \(0.20 - 5.995=-5.795\) | \(4.09\times(-5.795)=-23.70155\) | \(4.09^{2}=16.7281\) |
| 6 | 6.17 | \(6 - 8.91=-2.91\) | \(6.17 - 5.995 = 0.175\) | \((-2.91)\times0.175=-0.50925\) | \((-2.91)^{2}=8.4681\) |
| 5 | 5.55 | \(5 - 8.91=-3.91\) | \(5.55 - 5.995=-0.445\) | \((-3.91)\times(-0.445)=1.73995\) | \((-3.91)^{2}=15.2881\) |
\(\sum_{i = 1}^{11}(x_{i}-\bar{x})(y_{i}-\bar{y})=1.30255+0.04185 + 20.78025+\cdots+1.73995=-16.244\)
\(\sum_{i = 1}^{11}(x_{i}-\bar{x})^{2}=1.1881+0.0081 + 9.5481+\cdots+15.2881=96.2169\)
\(b_1=\frac{-16.244}{96.2169}\approx - 0.169\)
Step3: Calculate the \(y\) - intercept \(b_0\)
The formula for the \(y\) - intercept \(b_0=\bar{y}-b_1\bar{x}\).
\(b_0 = 5.995-(-0.169)\times8.91=5.995 + 1.50579=7.50079\approx7.50\)
The equation of the regression line is \(\hat{y}=7.50-0.169x\)
To identify a characteristic of the data ignored by the regression line, we need to look at the scatter - plot. If there is a non - linear pattern (such as a curve) in the scatter - plot, the regression line (which is a straight line) will ignore this non - linearity.
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\(\hat{y}=7.50-0.169x\)