QUESTION IMAGE
Question
the heights and weights of elephants at the zoo are recorded in the table.
| height (in feet) | weight (in tons) |
|---|---|
| 6 | 1.75 |
| 7 | 2.25 |
| 7 | 2.5 |
| 7.5 | 2.3 |
| 9 | 3.2 |
interpret the slope, using the equation for the line of best fit.
options:
ŷ = 0.024x − 0.337, for every additional foot in height, the elephant is predicted to gain 0.024 tons of weight
ŷ = 0.337x − 0.024, for every additional foot in height, the elephant is predicted to gain 0.337 tons of weight
ŷ = 0.337x − 0.024, for every additional foot in height, the elephant is predicted to lose 0.024 tons of weight
ŷ = 0.024x − 0.337, for every additional foot in height, the elephant is predicted to lose 0.337 tons of weight
Step1: Recall the slope-intercept form
The equation of a line in slope - intercept form is \(y = mx + b\), where \(m\) is the slope and \(b\) is the y - intercept. In the context of a linear regression equation (line of best fit) \(\hat{y}=mx + b\), \(x\) is the independent variable, \(\hat{y}\) is the predicted value of the dependent variable, \(m\) is the slope, and \(b\) is the y - intercept.
In this problem, the equation of the line of best fit is given (we need to analyze the slope's interpretation). Let's assume the equation is of the form \(\hat{y}=mx + b\), where \(x\) represents the height (in feet) of the elephant and \(\hat{y}\) represents the predicted weight (in tons) of the elephant.
Step2: Analyze the slope's meaning
The slope \(m\) in the equation \(\hat{y}=mx + b\) represents the change in the predicted value of \(y\) (weight) for a unit change in \(x\) (height).
Looking at the options, we need to find the equation where the slope is interpreted correctly. Let's consider the general interpretation: if the equation is \(\hat{y}=0.337x - 0.024\) (assuming this is one of the correct - looking equations from the options, we analyze the slope \(0.337\)). The slope of \(0.337\) means that for every additional foot in height (\(x\) increases by 1), the predicted weight (\(\hat{y}\)) increases by \(0.337\) tons.
Wait, let's re - check. Wait, maybe I misread the options. Let's look at the options again. The options are:
- \(\hat{y}=0.024x - 0.337\): Slope \(0.024\), meaning for each foot increase in height, weight increases by \(0.024\) tons (but let's check the data. As height increases from 4 to 9 feet, weight increases from 1.5 to 3.32 tons. The average rate of change: \(\frac{3.32 - 1.5}{9 - 4}=\frac{1.82}{5}=0.364\), close to \(0.337\) maybe due to regression). Wait, maybe the correct equation is \(\hat{y}=0.337x-0.024\). Let's analyze this equation. The slope is \(0.337\). So for every additional foot in height (\(x\) increases by 1), the predicted weight (\(\hat{y}\)) increases by \(0.337\) tons.
Looking at the options, the option that says "\(\hat{y} = 0.337x-0.024\), for every additional foot in height, the elephant is predicted to gain \(0.337\) tons of weight" is the correct interpretation of the slope.
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The correct option is the one with the equation \(\hat{y}=0.337x - 0.024\) and the interpretation "for every additional foot in height, the elephant is predicted to gain \(0.337\) tons of weight" (assuming the option is labeled, for example, if it's option B: \(\hat{y}=0.337x - 0.024\), for every additional foot in height, the elephant is predicted to gain \(0.337\) tons of weight, then the answer is B. \(\hat{y}=0.337x - 0.024\), for every additional foot in height, the elephant is predicted to gain \(0.337\) tons of weight)