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Segmentation and Clustering

Offered By: Udacity

Tags

Business Intelligence Courses Alteryx Courses Data Preparation Courses Data Analytics Courses Clustering Courses Principal Components Analysis Courses Hierarchical Clustering Courses Segmentation Courses

Course Description

Overview

The Segmentation and Clustering course provides students with the foundational knowledge to build and apply clustering models to develop more sophisticated segmentation in business contexts. You will learn:

  • The key concepts of segmentation and clustering, such as standardization vs. localization, distance, and scaling

  • The concepts of variable reduction and how to use principal components analysis (PCA) to prepare data for clustering models

  • How to choose between hierarchical and k-centroid clustering models

  • How to build and apply k-centroid clustering models

Throughout this course you’ll also learn the techniques to apply your knowledge in a data analytics program called Alteryx.

This course is part of the Business Analyst Nanodegree Program.


Syllabus

  • Segmentation and Clustering Fundamentals
    • Learn the difference between standardization and localization.,Learn about the concept of distance in clustering models.,Get introduced to how segmentation is used in business.
  • Data Preparation for Clustering Models
    • Learn how to select data for clustering models.,Learn what data types can be used in clustering models.,Scale and transform data for clustering models.
  • Variable Reduction
    • Learn the difference between factor analysis and principle components analysis.,Learn to use principal components analysis to reduce the number of variables in a model.
  • Clustering models design
    • Learn the difference between k-centroid and hierarchical clustering models.,Be able to select the number of clusters for a k-centroid model.,Validate your clusters in Alteryx.
  • Lesson 5 – Building a Clustering Model
    • Build a k-centroid clustering model to segment retail stores.,Learn how to visualize and validate your clusters.,Be able to interpret the results and communicate the “story” of the analysis.

Taught by

Rod Light

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