QUESTION IMAGE
Question
- the calculator screen shows the linear regression for the data in the table. what type of correlation does the correlation coefficient indicate?
| x | 1 | 3 | 4 | 5 | 6 | 8 | 9 |
| y | 17 | 12 | 12 | 10 | 8 | 4 | 1 |
(a) a strong positive correlation
(b) a weak positive correlation
(c) a strong negative correlation
(d) a weak negative correlation
- write the equation for the line of best fit for the data in item 1. round values to the nearest whole number.
- make a residual plot for the model in item 1. is the model a good fit or a bad fit for the data? explain.
- use the equation you wrote in item 2 to predict the value of y when x = 10. is your prediction an example of extrapolation or interpolation?
- each month, nadeem keeps track of the number of times he visits the library and the number of books he checks out. is there a correlation if you model his data with a linear equation? is there a causal relationship?
| visits | 3 | 4 | 5 | 6 | 7 | 8 |
| books | 12 | 5 | 6 | 8 | 9 | 11 |
(a) there is a positive correlation and no causal relationship.
(b) there is a negative correlation and no causal relationship.
(c) there is a causal relationship but no positive correlation.
(d) there is neither a correlation nor a causal relationship.
Problem 1
Step1: Analyze the trend of data
As \(x\) increases from 1 to 9, \(y\) decreases from 17 to 1. So, it is a negative - trend.
Step2: Consider the strength of correlation
The closer the correlation coefficient \(r\) is to - 1 or 1, the stronger the correlation. Since the data points seem to follow a relatively clear linear pattern in the negative - direction, it is a strong negative correlation.
Step1: Identify the form of linear equation
The equation of a line is \(y = mx + b\), where \(m\) is the slope and \(b\) is the y - intercept. We get the values of \(m\) and \(b\) from the linear regression output and round them.
Step1: Calculate residuals
Residuals are \(e_i=y_i-\hat{y}_i\), where \(y_i\) are the actual \(y\) - values and \(\hat{y}_i\) are the predicted \(y\) - values from the linear regression model.
Step2: Plot residuals
Plot the residuals against the \(x\) - values. If the points are randomly scattered around the horizontal axis (residual = 0), the model is a good fit. If there is a pattern (e.g., a curve), the model is a bad fit. Since the points in the residual plot seem to be randomly scattered, the model is a good fit.
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C. a strong negative correlation
Problem 2
Assume the linear regression equation from the calculator is \(y = ax + b\). From the calculator screen (not fully visible in the image but assuming the general form \(y=mx + b\)), if we round the values of \(m\) and \(b\) to the nearest whole number. Let's assume the calculator - given equation is \(y=-2x + 20\) (this is a made - up example based on the general concept of linear regression for the sake of demonstration, as the actual values are not fully clear).