Exploratory Multivariate Data Analysis

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Free Online Course: Exploratory Multivariate Data Analysis provided by France Université Numerique is a comprehensive online course, which lasts for 5 weeks long, 5 hours a week. The course is taught in English and is free of charge. Upon completion of the course, you can receive an e-certificate from France Université Numerique. Exploratory Multivariate Data Analysis is taught by Jérôme Pagès, François Husson and Magalie Houée-Bigot.

Overview
  • About this course

    This 5th edition of the MOOC starts on March 2, 2020.

    Exploratory multivariate data analysis is studied and teached in a French-way since a long time in France. This course focuses on four essential and basic methods, those with the largest potential in terms of applications: principal component analysis (PCA) when variables are quantitative, correspondence analysis (CA) and multiple correspondence analysis (MCA) when variables are categorical and clustering. An extension to Multiple Factor Analysis (MFA) will give you the opportunity to analyse more complex dataset that are structured by groups.

    This course is application-oriented; formalism and mathematics writing have been reduced as much as possible while examples and intuition have been emphasized and the numerous exercises done with FactoMineR (a package of the free R software) will make the participant efficient and reliable face to data analysis.

    We hope that with this course, the participant will be fully equipped (theory, examples, software) to confront multivariate real-life data.

Syllabus
  • Course Schedule

    Week 1. Principal Component Analysis
    • Data - Practicalities
    • Studying individuals and variables
    • Aids for interpretation
    • PCA in practice using FactoMineR
    Week 2. Correspondence Analysis
    • Data - introduction and independence model
    • Visualizing the row and column clouds
    • Inertia and percentage of inertia
    • Simultaneous representation
    • Interpretation aids
    • Correspondance Analysis in practice using FactoMineR
    Week 3. Multiple Correspondence Analysis
    • Data - issues
    • Visualizing the point cloud of individuals
    • Visualizing the point cloud of categories - simultaneous representation
    • Interpretation aids
    • Multiple Correspondance Analysis in practice using FactoMineR
    Week 4. Clustering
    • Hierarchical clustering
    • An example, and choosing the number of classes
    • Partitioning methods and other details
    • Characterizing the classes
    • Clustering in practice using FactoMineR
    Week 5 : Multiple Factor Analysis
    • Data - issues
    • Balancing groups and choosing a weighting for the variables
    • Studying and visualizing the groups of variables
    • Visualizing the partial points
    • Visualizing the separate analyses
    • Taking into account groups of categorical variables
    • Taking into account contingency tables
    • Interpretation aids
    • Multiple Factor Analysis in practice using FactoMineR