Mastering SPSS – Multiple Regression Using SPSS Statistics




Multiple Regression Using SPSS Statistics

Multiple regression analysis is a statistical technique that is used to predict the value of one variable based on the values of two or more other variables. In this tutorial, we will walk you through the steps of conducting a multiple regression analysis using SPSS Statistics.

Step 1: Load Your Data

Open SPSS Statistics and load your dataset. Ensure that your data is correctly formatted and that there are no missing values. In our example, we will use a dataset that includes variables for salary, years of experience, and education level.

Step 2: Perform the Multiple Regression Analysis

Navigate to Analyze > Regression > Linear…. In the Linear Regression dialog box, move your dependent variable to the Dependent box and your independent variables to the Independent(s) box.

SPSS Linear Regression Dialog Box

Step 3: Interpret the Results

Once you click OK, SPSS will run the analysis and produce output that includes several tables. Key tables include the Model Summary, ANOVA, and Coefficients tables.

Model Summary

Model R R Square Adjusted R Square Std. Error of the Estimate
1 0.846 0.715 0.702 1.988

ANOVA Table

Model Sum of Squares df Mean Square F Sig.
1 102.135 2 51.067 12.964 0.000

Coefficients Table

Model Unstandardized Coefficients B Std. Error Standardized Coefficients Beta t Sig.
Constant 2.451 0.745 3.291 0.001
Years of Experience 0.675 0.123 0.512 5.487 0.000
Education Level 0.332 0.105 0.305 3.162 0.002

Discussion

The results indicate that both years of experience and education level are significant predictors of salary. The model explains 71.5% of the variance in salary, which is considered a good fit. The ANOVA table shows that the model is statistically significant (p < 0.001).

In APA format, you would report these results as follows:

A multiple regression was performed to predict salary based on years of experience and education level. The overall model was significant, F(2, 97) = 12.964, p < 0.001, R2 = 0.715. Both predictors were significant, with years of experience (B = 0.675, p < 0.001) and education level (B = 0.332, p = 0.002) positively predicting salary.

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