IDNLearn.com offers a user-friendly platform for finding and sharing knowledge. Ask your questions and receive reliable, detailed answers from our dedicated community of experts.
Sagot :
To determine how the amount of time, [tex]\(X\)[/tex], a customer spends browsing in the store affects their spending, [tex]\(\hat{Y}\)[/tex], we have the given regression equation:
[tex]\[\hat{Y} = 40 + 0.43X\][/tex]
Here is a step-by-step explanation of how we analyze this equation:
### Step 1: Understand the components of the equation
1. Intercept ([tex]\(40\)[/tex]):
- The intercept in the regression equation is 40. This means that if a customer spends zero minutes in the store ([tex]\(X = 0\)[/tex]), the predicted amount they will spend is [tex]$40. 2. Slope (\(0.43\)): - The slope is 0.43. This value indicates that for each additional minute a customer spends in the store, the amount they are predicted to spend increases by $[/tex]0.43.
### Step 2: Predicting the amount spent for a specific browsing time
To predict the amount spent by a customer who spends a certain amount of time browsing, we can substitute [tex]\(X\)[/tex] with the given browsing time into the regression equation.
Let's calculate the predicted amount a customer will spend if they browse for 10 minutes:
1. Substitute [tex]\(X = 10\)[/tex] into the regression equation:
[tex]\[ \hat{Y} = 40 + 0.43 \times 10 \][/tex]
2. Perform the multiplication:
[tex]\[ 0.43 \times 10 = 4.3 \][/tex]
3. Add the result to the intercept:
[tex]\[ \hat{Y} = 40 + 4.3 = 44.3 \][/tex]
So, if a customer spends 10 minutes browsing in the store, the predicted amount they will spend is [tex]$44.3. ### Summary Given the regression equation \(\hat{Y} = 40 + 0.43X\), the components are: - Intercept: 40 - Slope: 0.43 For a customer who spends \(X = 10\) minutes browsing, the predicted spending amount \( \hat{Y} \) is calculated as follows: \[ \hat{Y} = 40 + 0.43 \times 10 = 44.3 \] Thus, if a customer spends 10 minutes in the store, they are expected to spend $[/tex]44.3.
[tex]\[\hat{Y} = 40 + 0.43X\][/tex]
Here is a step-by-step explanation of how we analyze this equation:
### Step 1: Understand the components of the equation
1. Intercept ([tex]\(40\)[/tex]):
- The intercept in the regression equation is 40. This means that if a customer spends zero minutes in the store ([tex]\(X = 0\)[/tex]), the predicted amount they will spend is [tex]$40. 2. Slope (\(0.43\)): - The slope is 0.43. This value indicates that for each additional minute a customer spends in the store, the amount they are predicted to spend increases by $[/tex]0.43.
### Step 2: Predicting the amount spent for a specific browsing time
To predict the amount spent by a customer who spends a certain amount of time browsing, we can substitute [tex]\(X\)[/tex] with the given browsing time into the regression equation.
Let's calculate the predicted amount a customer will spend if they browse for 10 minutes:
1. Substitute [tex]\(X = 10\)[/tex] into the regression equation:
[tex]\[ \hat{Y} = 40 + 0.43 \times 10 \][/tex]
2. Perform the multiplication:
[tex]\[ 0.43 \times 10 = 4.3 \][/tex]
3. Add the result to the intercept:
[tex]\[ \hat{Y} = 40 + 4.3 = 44.3 \][/tex]
So, if a customer spends 10 minutes browsing in the store, the predicted amount they will spend is [tex]$44.3. ### Summary Given the regression equation \(\hat{Y} = 40 + 0.43X\), the components are: - Intercept: 40 - Slope: 0.43 For a customer who spends \(X = 10\) minutes browsing, the predicted spending amount \( \hat{Y} \) is calculated as follows: \[ \hat{Y} = 40 + 0.43 \times 10 = 44.3 \] Thus, if a customer spends 10 minutes in the store, they are expected to spend $[/tex]44.3.
Your participation means a lot to us. Keep sharing information and solutions. This community grows thanks to the amazing contributions from members like you. Thank you for choosing IDNLearn.com for your queries. We’re here to provide accurate answers, so visit us again soon.