43 college students
44% male, 56% female
Students reported on the number of hours spent studying per week (0-40 hours), their life satisfaction (scale from 0-100), degree of stress they experienced over the last month (scale 0-5), and completed an IQ test (40-160).
Students also reported their gender (1=male, 2=female) and cumulative GPA.
For the statistical analysis performed, you need to provide responses to two questions:
SPSS Output: Statistical Analysis 1
Variables Entered/Removedb |
|||
Model |
Variables Entered |
Variables Removed |
Method |
1 |
stress, IQ, hrsstudy, Gender, gpa |
. |
Enter |
a. All requested variables entered. b. Dependent Variable: lifesatisfaction |
Model |
R |
R Square |
Adjusted R Square |
Std. Error of the Estimate |
|
1 |
.770a |
.593 |
.541 |
11.618 |
ANOVAb |
||||||
Model |
Sum of Squares |
df |
Mean Square |
F |
Sig. |
|
1 |
Regression |
7672.577 |
5 |
1534.515 |
11.368 |
.000a |
Residual |
5264.223 |
39 |
134.980 |
|||
Total |
12936.800 |
44 |
||||
a. Predictors: (Constant), stress, IQ, hrsstudy, Gender, gpa b. Dependent Variable: lifesatisfaction |
Coefficientsa |
||||||
Model |
Unstandardized Coefficients |
Standardized Coefficients |
t |
Sig. |
||
B |
Std. Error |
Beta |
||||
1 |
(Constant) |
49.710 |
15.314 |
3.246 |
.002 |
|
Gender |
-.985 |
3.966 |
-.029 |
-.248 |
.805 |
|
gpa |
10.921 |
3.686 |
.453 |
2.963 |
.005 |
|
IQ |
.151 |
.178 |
.114 |
.853 |
.399 |
|
hrsstudy |
-.088 |
.400 |
-.024 |
-.221 |
.826 |
|
stress |
-5.519 |
1.667 |
-.406 |
-3.310 |
.002 |
|
a. Dependent Variable: lifesatisfaction |
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43 college students 44% male, 56% female Students reported on the number of hours spent studying...
43 college students 44% male, 56% female Students reported on the number of hours spent studying per week (0-40 hours), their life satisfaction (scale from 0-100), degree of stress they experienced over the last month (scale 0-5), and completed an IQ test (40-160). Students also reported their gender (1=male, 2=female) and cumulative GPA. For the statistical analysis performed, you need to provide responses to two questions: What type of statistical analysis was used to examine what kind of research question?...
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