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Skyler J. Cranmer

Kirjat ja teokset yhdessä paikassa: 2 kirjaa, julkaisuja vuodelta 2020, suosituimpien joukossa Inferential Network Analysis. Vertaile teosten hintoja ja tarkista saatavuus suomalaisista kirjakaupoista.

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Inferential Network Analysis

Inferential Network Analysis

Skyler J. Cranmer; Bruce A. Desmarais; Jason W. Morgan

Cambridge University Press
2020
sidottu
This unique textbook provides an introduction to statistical inference with network data. The authors present a self-contained derivation and mathematical formulation of methods, review examples, and real-world applications, as well as provide data and code in the R environment that can be customised. Inferential network analysis transcends fields, and examples from across the social sciences are discussed (from management to electoral politics), which can be adapted and applied to a panorama of research. From scholars to undergraduates, spanning the social, mathematical, computational and physical sciences, readers will be introduced to inferential network models and their extensions. The exponential random graph model and latent space network model are paid particular attention and, fundamentally, the reader is given the tools to independently conduct their own analyses.
Inferential Network Analysis

Inferential Network Analysis

Skyler J. Cranmer; Bruce A. Desmarais; Jason W. Morgan

Cambridge University Press
2020
pokkari
This unique textbook provides an introduction to statistical inference with network data. The authors present a self-contained derivation and mathematical formulation of methods, review examples, and real-world applications, as well as provide data and code in the R environment that can be customised. Inferential network analysis transcends fields, and examples from across the social sciences are discussed (from management to electoral politics), which can be adapted and applied to a panorama of research. From scholars to undergraduates, spanning the social, mathematical, computational and physical sciences, readers will be introduced to inferential network models and their extensions. The exponential random graph model and latent space network model are paid particular attention and, fundamentally, the reader is given the tools to independently conduct their own analyses.