Suppose you are interested in the role of social support in immune function among retired men who live alone. You ask 50 patients to record the number of days they do not see or interact with a friend or family member over a period of 1 month to see whether the number of nonsocial days in a typical month correlates with the number of new illnesses they experience per year. You decide to use the computational formula to calculate the Pearson correlation between the number of nonsocial days in a month and the number of illnesses per year. To do so, you call the number of nonsocial days in a month X and the number of illnesses per year Y. Then, you add up your data values (X and Y), add up the squares of your data values (X² and Y²), and add up the products of your data values (XY). The following table summarizes your results: ΣΧ ΣΥ ΣΧΥ ΣΧ Y2 590 380 4,887 10,456 4,258 Find the following values: The sum of squares for the number of nonsocial days in a month is SSx= [Select ] The sum of squares for the number of illnesses per year is SSy= [ Select ] The sum of products for the number of nonsocial days in a month and the number of illnesses per year is SP = [ Select ] [ Select ] The Pearson correlation coefficient is r = cho live alone The

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Suppose you are interested in the role of social support in immune function among retired men who live alone. You ask 50 patients to record the number of
days they do not see or interact with a friend or family member over a period of 1 month to see whether the number of nonsocial days in a typical month
correlates with the number of new illnesses they experience per year.
You decide to use the computational formula to calculate the Pearson correlation between the number of nonsocial days in a month and the number of
illnesses per year. To do so, you call the number of nonsocial days in a month X and the number of illnesses per year Y. Then, you add up your data values (X
and Y), add up the squares of your data values (> X² and Y²), and add up the products of your data values ( XY). The following table summarizes
your results:
ΣΧ
ΣΥ
Σ ΧΥ
590
380
4,887
10,456
ΣΥ
4,258
Find the following values:
The sum of squares for the number of nonsocial days in a month is SSx=
[ Select ]
The sum of squares for the number of illnesses per year is SSy= [ Select ]
The sum of products for the number of nonsocial days in a month and the number of illnesses per year is SP = [Select ]
The Pearson correlation coefficient is r = [ Select ]
%3D
Suppose you also want to predict the number of illnesses per year from the number of nonsocial days in a month among elderly men who live alone. The
, indicating that [Select]
% of the variability in the number of
coefficient of determination is r² = [Select ]
illnesses per year can be explained by the relationship between the number of illnesses per year and the number of nonsocial days in a month.
When doing your analysis, suppose that, in addition to having data for the number of nonsocial days in a month for these elderly men who live alone, you have
data for the number of face-to-face interactions in a month. You'd expect the correlation between the number of face-to-face interactions in a month and the
and the correlation between the number of face-to-face interactions in a month and
number of nonsocial days in a month to be [Select ]
the number of illnesses per year to be [ Select]
<>
<>
Transcribed Image Text:Suppose you are interested in the role of social support in immune function among retired men who live alone. You ask 50 patients to record the number of days they do not see or interact with a friend or family member over a period of 1 month to see whether the number of nonsocial days in a typical month correlates with the number of new illnesses they experience per year. You decide to use the computational formula to calculate the Pearson correlation between the number of nonsocial days in a month and the number of illnesses per year. To do so, you call the number of nonsocial days in a month X and the number of illnesses per year Y. Then, you add up your data values (X and Y), add up the squares of your data values (> X² and Y²), and add up the products of your data values ( XY). The following table summarizes your results: ΣΧ ΣΥ Σ ΧΥ 590 380 4,887 10,456 ΣΥ 4,258 Find the following values: The sum of squares for the number of nonsocial days in a month is SSx= [ Select ] The sum of squares for the number of illnesses per year is SSy= [ Select ] The sum of products for the number of nonsocial days in a month and the number of illnesses per year is SP = [Select ] The Pearson correlation coefficient is r = [ Select ] %3D Suppose you also want to predict the number of illnesses per year from the number of nonsocial days in a month among elderly men who live alone. The , indicating that [Select] % of the variability in the number of coefficient of determination is r² = [Select ] illnesses per year can be explained by the relationship between the number of illnesses per year and the number of nonsocial days in a month. When doing your analysis, suppose that, in addition to having data for the number of nonsocial days in a month for these elderly men who live alone, you have data for the number of face-to-face interactions in a month. You'd expect the correlation between the number of face-to-face interactions in a month and the and the correlation between the number of face-to-face interactions in a month and number of nonsocial days in a month to be [Select ] the number of illnesses per year to be [ Select] <> <>
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