What are the five spss data analysis methods?
Five methods of spss data analysis: 1. Linear model; click Analysis, general linear model, single variable, set the dependent variable and fixed factor, and click OK. 2. Chart analysis. 3. Regression analysis; click Analysis, open the regression, set the independent variable and dependent variable data, and click OK. 4. Histogram analysis. 5. Statistical analysis.
The operating environment of this tutorial: Windows 7 system, Dell G3 computer.
Five methods of spss data analysis: linear model, chart analysis, regression analysis, histogram analysis, and statistical analysis.
Linear Model
Click Analysis, General Linear Model, Single Variable, set the dependent variable and fixed factor, click OK, and view the specific construction of the linear model in the results window Condition.
Chart Analysis
Click the menu bar graphics to open the old dialog box, select a chart type, and select Simple Scatter Chart, Click Define, set the data columns of the XY axis, click OK, and view the chart results in the output window.
Regression analysis
Click on Analysis to open regression and set independent variables and dependent variables data, click OK to view the results of the regression analysis in the output window.
Histogram analysis
Click on the graph to open the old dialog box and click on histogram , select a column of variables, click OK, and view the distribution trend of the data in the results window.
Statistical Analysis
Click Analysis, open descriptive statistics, enter description, and select Analyzed data column, click OK to view the overall data situation in the output window.
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