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Descriptive vs. Inferential Community Detection in Networks

Descriptive vs. Inferential Community Detection in Networks
Open Access

Descriptive vs. Inferential Community Detection in Networks

Pitfalls, Myths and Half-Truths
Tiago P. Peixoto, Central European University, Vienna
August 2023
Adobe eBook Reader
9781009122337
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    Community detection is one of the most important methodological fields of network science, and one which has attracted a significant amount of attention over the past decades. This area deals with the automated division of a network into fundamental building blocks, with the objective of providing a summary of its large-scale structure. Despite its importance and widespread adoption, there is a noticeable gap between what is arguably the state-of-the-art and the methods which are actually used in practice in a variety of fields. The Elements attempts to address this discrepancy by dividing existing methods according to whether they have a 'descriptive' or an 'inferential' goal. While descriptive methods find patterns in networks based on context-dependent notions of community structure, inferential methods articulate a precise generative model, and attempt to fit it to data. In this way, they are able to provide insights into formation mechanisms and separate structure from noise. This title is also available as open access on Cambridge Core.

    Product details

    August 2023
    Adobe eBook Reader
    9781009122337
    0 pages
    This ISBN is for an eBook version which is distributed on our behalf by a third party.

    Table of Contents

    • 1. Introduction
    • 2. Descriptive vs. inferential community detection
    • 3. Modularity maximization considered harmful
    • 4. Myths, pitfalls, and half-truths
    • 5. Conclusion
    • References.