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Unsupervised Machine Learning for Clustering in Political and Social Research

Unsupervised Machine Learning for Clustering in Political and Social Research

Unsupervised Machine Learning for Clustering in Political and Social Research

Philip D. Waggoner, University of Chicago
January 2021
Paperback
9781108793384
$22.00
USD
Paperback
USD
eBook

    In the age of data-driven problem-solving, applying sophisticated computational tools for explaining substantive phenomena is a valuable skill. Yet, application of methods assumes an understanding of the data, structure, and patterns that influence the broader research program. This Element offers researchers and teachers an introduction to clustering, which is a prominent class of unsupervised machine learning for exploring and understanding latent, non-random structure in data. A suite of widely used clustering techniques is covered in this Element, in addition to R code and real data to facilitate interaction with the concepts. Upon setting the stage for clustering, the following algorithms are detailed: agglomerative hierarchical clustering, k-means clustering, Gaussian mixture models, and at a higher-level, fuzzy C-means clustering, DBSCAN, and partitioning around medoids (k-medoids) clustering.

    Product details

    January 2021
    Paperback
    9781108793384
    75 pages
    150 × 230 × 5 mm
    0.14kg
    Available

    Table of Contents

    • 1. Introduction
    • 2. Setting the stage for clustering
    • 3. Agglomerative hierarchical clustering
    • 4. k-means clustering
    • 5. Gaussian mixture models
    • 6. Advanced methods
    • 7. Conclusion.
    Resources for
    Type
    Waggoner_CUP_Data_Code.zip
    Size: 180.41 KB
    Type: application/zip
      Author
    • Philip D. Waggoner , University of Chicago