This foundational course equips learners with the conceptual knowledge and practical skills needed to perform cluster analysis—an essential unsupervised machine learning technique—using SPSS. Through a blend of theoretical exploration and hands-on implementation, learners will define, differentiate, apply, and evaluate key clustering methodologies, including hierarchical methods, k-means clustering, and Two-Step cluster analysis.

SPSS: Apply & Evaluate Cluster Analysis Techniques

20 reviews
What you'll learn
Explain clustering concepts and differentiate hierarchical, k-means, and Two-Step methods.
Apply preprocessing and clustering techniques in SPSS to segment real-world data.
Evaluate cluster quality using BIC/AIC criteria, dendrograms, and silhouette scores.
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Reviewed on Dec 20, 2025
It’s suitable for students or professionals working with data analysis and research.
Reviewed on Nov 22, 2025
Overall, the course is good for learners who want a quick, hands-on start with clustering in SPSS, but those looking for deeper insights might feel it leaves them wanting more.
Reviewed on Nov 15, 2025
Clear, practical guide that demystifies cluster analysis in SPSS, offering concise explanations, useful examples, and actionable evaluation techniques throughout.
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