Answer :

Alright class, let's go through a detailed, step-by-step solution to find the best-fit line for the given data points using linear regression. Here are the data points \( (x, y) \):

[tex]\[ \begin{array}{|c|c|} \hline x & y \\ \hline -2 & -7 \\ \hline -1 & -3 \\ \hline 0 & 1 \\ \hline 1 & 5 \\ \hline \end{array} \][/tex]

We want to find a linear relationship in the form \( y = mx + b \), where \( m \) is the slope and \( b \) is the y-intercept.

### Step 1: Summing the necessary quantities
To find \( m \) and \( b \), we need to calculate the following sums:
- \( \sum x \)
- \( \sum y \)
- \( \sum xy \)
- \( \sum x^2 \)

Given data, we have calculated these sums as follows:
[tex]\[ \sum x = -2 \][/tex]
[tex]\[ \sum y = -4 \][/tex]
[tex]\[ \sum xy = 22 \][/tex]
[tex]\[ \sum x^2 = 6 \][/tex]

### Step 2: Calculate the slope \( m \)
The formula for the slope \( m \) is:
[tex]\[ m = \frac{n \sum (xy) - (\sum x)(\sum y)}{n \sum (x^2) - (\sum x)^2} \][/tex]

Let's plug in the values:
[tex]\[ n = 4 \quad (\text{since there are 4 data points}) \][/tex]
[tex]\[ m = \frac{4 \cdot 22 - (-2) \cdot (-4)}{4 \cdot 6 - (-2)^2} = \frac{88 - 8}{24 - 4} = \frac{80}{20} = 4 \][/tex]

So, the slope \( m \) is \( 4 \).

### Step 3: Calculate the y-intercept \( b \)
The formula for the y-intercept \( b \) is:
[tex]\[ b = \frac{\sum y - m \sum x}{n} \][/tex]

Using the values we have:
[tex]\[ b = \frac{-4 - 4 \cdot (-2)}{4} = \frac{-4 + 8}{4} = \frac{4}{4} = 1 \][/tex]

So, the y-intercept \( b \) is \( 1 \).

### Final Result
Therefore, the equation of the best-fit line is:
[tex]\[ y = 4x + 1 \][/tex]

Summarizing the key calculation results:

- \( \sum x = -2 \)
- \( \sum y = -4 \)
- \( \sum xy = 22 \)
- \( \sum x^2 = 6 \)
- \( m = 4 \)
- \( b = 1 \)

This completes our detailed solution for finding the best-fit line. The best-fit line for the given data points is [tex]\( y = 4x + 1 \)[/tex].