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

Instructor: EDUCBA
Access provided by GC University Lahore
(13 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.
Skills you'll gain
Details to know

Add to your LinkedIn profile
7 assignments
August 2025
See how employees at top companies are mastering in-demand skills

There are 2 modules in this course
This module introduces the fundamental principles of cluster analysis, a core technique in unsupervised machine learning. Learners will explore the conceptual basis of clustering, understand how clustering groups data points based on similarity, and investigate widely used clustering techniques including hierarchical clustering and k-means. Emphasis is placed on understanding how these methods operate, their practical applications, and the tools used to visualize and evaluate clustering results. By the end of this module, learners will gain a strong conceptual and technical foundation in clustering approaches, preparing them for more advanced machine learning techniques and real-world data segmentation tasks.
What's included
8 videos4 assignments
This module focuses on the implementation and interpretation of cluster analysis techniques using SPSS. Learners will explore practical workflows involving Two-Step clustering and K-means clustering, including the evaluation of clustering quality and methods for handling missing data. Through hands-on demonstrations, students will gain experience with SPSS output interfaces, learn to navigate clustering diagnostics, and apply data preprocessing strategies such as listwise and pairwise deletion. The module equips learners with practical tools to translate unsupervised machine learning concepts into real-world analytical outputs.
What's included
4 videos3 assignments
Why people choose Coursera for their career




Learner reviews
13 reviews
- 5 stars
100%
- 4 stars
0%
- 3 stars
0%
- 2 stars
0%
- 1 star
0%
Showing 3 of 13
Reviewed on Oct 17, 2025
Great for students and professionals looking to strengthen their statistical and data interpretation skills with SPSS.
Reviewed on Oct 16, 2025
The instructor's teaching style is engaging and easy to follow.
Reviewed on Oct 31, 2025
Showed strong command of SPSS tools and workflows for performing hierarchical and K-means clustering.

