Photo AI
Question 1
The table below shows the time (in seconds, rounded to ONE decimal place) taken by 12 athletes to run the 100 metre sprint and the distance (in metres, rounded to ON... show full transcript
Step 1
Answer
To find the values of a and b in the least squares regression line ar{y} = a + bx, we first calculate the necessary statistics from the given data.
Calculate the means:
Calculate the slope (b):
b = rac{n( ext{sum of }xy) - (sum of x)(sum of y)}{n( ext{sum of }x^2) - (sum of x)^2}
where:
Calculate the y-intercept (a):
a = ar{y} - bar{x}
Using these calculations with the provided data, we find:
Step 2
Answer
To find the predicted distance of the best long jump for an athlete who runs the 100m sprint in 11.7 seconds, we can use the previously calculated values of a and b in the equation:
ar{y} = a + bx
Substituting in the values:
We compute:
ar{y} = 14.343 + (-0.642)(11.7)
ar{y} ext{ gives us approximately } 6.85 ext{ meters}
Thus, the predicted distance of the best long jump is approximately 6.85 metres.
Step 3
Answer
To determine how the gradient of the least squares regression line changes with the new data point (12.3 seconds, 7.6 meters), we observe that the additional point may cause the regression line to shift.
Generally, if the new point follows the trend (i.e., it lies close to the line), the gradient will likely remain similar. If the point diverges significantly, the gradient could decrease.
Thus, the response should indicate that the gradient may change, depending on the correlation between the variable values. We conclude that the gradient could either increase or decrease, depending on further calculations and context.
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