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for many people, the womens figure skating competition is the highlight…

Question

for many people, the womens figure skating competition is the highlight of the olympic winter games. scores in the short program x and scores in the free skate y were recorded for each of the 24 skaters who competed in both rounds during the 2010 winter olympics in vancouver, canada. here is a scatterplot with least - squares regression line y=-16.2 + 2.07x. for this model, s = 10.2 and r² = 0.736. interpret the value of r². about 73.6% of the variability in short program score is accounted for by the least - squares regression line with x = free skate score. about 73.6% of the variability in free skate score is accounted for by the least - squares regression line with x = short program score. for each one point increase in short program score, the model predicts about 73.6% increase in free skate score. about 73.6% of the free skate score is accounted for by the least - squares regression line with x = short program score. there is a strong, positive, linear association between free skate score and short program score.

Explanation:

Brief Explanations

The coefficient of determination $r^{2}$ represents the proportion of the variance in the dependent - variable that is predictable from the independent variable. In a regression model where $y$ (free - skate score) is regressed on $x$ (short - program score), $r^{2}=0.736$ means that about 73.6% of the variability in the free - skate score can be accounted for by the least - squares regression line using the short - program score as the predictor.

Answer:

B. About 73.6% of the variability in free skate score is accounted for by the least - squares regression line with $x =$ short program score.