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SPSS

Regression Analysis — Differences Among Three Types of Logistic Regression

··453 words·3 mins
This article introduces three common logistic regression models: binary logistic regression, multinomial logistic regression, and ordered logistic regression. It explains their applications and differences for different dependent-variable types, helping readers understand when to use these statistical models in real analysis.

【SPSS】Regression Analysis — Linear Regression

··757 words·4 mins
This article introduces the main differences between linear regression and logistic regression, and explains the steps, result interpretation, and common statistics in regression analysis, such as R-squared, the Durbin-Watson value, and regression coefficients, helping readers understand how to use regression models for data analysis.

【SPSS】Correlation Analysis

··499 words·3 mins
This article introduces how to use SPSS for correlation analysis and how to interpret correlation matrices and heatmaps, helping readers quickly master correlation-analysis methods and result interpretation among scale dimensions.

【SPSS】Difference Analysis

··1475 words·7 mins
This article explains independent-samples t tests and one-way analysis of variance (ANOVA) in difference analysis, including SPSS operation steps, homogeneity-of-variance testing, t-value analysis, and result interpretation, helping readers understand how to compare mean differences between groups in data analysis.

【SPSS】Normality Test

··268 words·2 mins
This article introduces how to use SPSS for descriptive statistical analysis, focusing on how to test normal distribution with histograms and Q-Q plots, helping users better understand data distributions and the analysis process.

【SPSS】Validity Analysis

··1081 words·6 mins
This article introduces common SPSS validity-analysis methods, including exploratory factor analysis, principal component analysis, and confirmatory factor analysis. It explains how to interpret the KMO test and factor loadings to help readers understand validity assessment in data analysis.