
Quantitative Intertextuality
Analyzing the Markers of Information Reuse
Springer (Publisher)
Published on 18. July 2019
Book
Hardback
XVII, 189 pages
978-3-030-23413-3 (ISBN)
Description
This book introduces quantitative intertextuality, a new approach to the algorithmic study of information reuse in text, sound and images. Employing a variety of tools from machine learning, natural language processing, and computer vision, readers will learn to trace patterns of reuse across diverse sources for scholarly work and practical applications.
The respective chapters share highly novel methodological insights in order to guide the reader through the basics of intertextuality. In Part 1, "Theory", the theoretical aspects of intertextuality are introduced, leading to a discussion of how they can be embodied by quantitative methods. In Part 2, "Practice", specific quantitative methods are described to establish a set of automated procedures for the practice of quantitative intertextuality. Each chapter in Part 2 begins with a general introduction to a major concept (e.g., lexical matching, sound matching, semantic matching), followed by a casestudy (e.g., detecting allusions to a popular television show in tweets, quantifying sound reuse in Romantic poetry, identifying influences in fan faction by thematic matching), and finally the development of an algorithm that can be used to reveal parallels in the relevant contexts.
Because this book is intended as a "gentle" introduction, the emphasis is often on simple yet effective algorithms for a given matching task. A set of exercises is included at the end of each chapter, giving readers the chance to explore more cutting-edge solutions and novel aspects to the material at hand. Additionally, the book's companion website includes software (R and C++ library code) and all of the source data for the examples in the book, as well as supplemental content (slides, high-resolution images, additional results) that may prove helpful for exploring the different facets of quantitative intertextuality that are presented in each chapter.
Given its interdisciplinary nature, the book will appeal to a broad audience. From practitioners specializing in forensics to students of cultural studies, readers with diverse backgrounds (e.g., in the social sciences, natural language processing, or computer vision) will find valuable insights.
The respective chapters share highly novel methodological insights in order to guide the reader through the basics of intertextuality. In Part 1, "Theory", the theoretical aspects of intertextuality are introduced, leading to a discussion of how they can be embodied by quantitative methods. In Part 2, "Practice", specific quantitative methods are described to establish a set of automated procedures for the practice of quantitative intertextuality. Each chapter in Part 2 begins with a general introduction to a major concept (e.g., lexical matching, sound matching, semantic matching), followed by a casestudy (e.g., detecting allusions to a popular television show in tweets, quantifying sound reuse in Romantic poetry, identifying influences in fan faction by thematic matching), and finally the development of an algorithm that can be used to reveal parallels in the relevant contexts.
Because this book is intended as a "gentle" introduction, the emphasis is often on simple yet effective algorithms for a given matching task. A set of exercises is included at the end of each chapter, giving readers the chance to explore more cutting-edge solutions and novel aspects to the material at hand. Additionally, the book's companion website includes software (R and C++ library code) and all of the source data for the examples in the book, as well as supplemental content (slides, high-resolution images, additional results) that may prove helpful for exploring the different facets of quantitative intertextuality that are presented in each chapter.
Given its interdisciplinary nature, the book will appeal to a broad audience. From practitioners specializing in forensics to students of cultural studies, readers with diverse backgrounds (e.g., in the social sciences, natural language processing, or computer vision) will find valuable insights.
More details
Edition
2019 ed.
Language
English
Place of publication
Cham
Switzerland
Publishing group
Springer International Publishing
Target group
Professional and scholarly
Illustrations
25 s/w Abbildungen
XVII, 189 p. 25 illus.
Dimensions
Height: 241 mm
Width: 160 mm
Thickness: 17 mm
Weight
483 gr
ISBN-13
978-3-030-23413-3 (9783030234133)
DOI
10.1007/978-3-030-23415-7
Schweitzer Classification
Other editions
Additional editions

Christopher W. Forstall | Walter J. Scheirer
Quantitative Intertextuality
Analyzing the Markers of Information Reuse
E-Book
07/2019
1st Edition
Springer
€117.69
Available for download
Persons
Christopher W. Forstall
is Assistant Professor of Classics at Mount Allison University, where he teaches both Digital Humanities and Classical Languages and Literature. His research interests and areas of publication include Classical Latin and Greek Epic poetry, intertextuality, and oral-formulaic theory, as well as computational stylometry and authorship attribution.
Walter J. Scheirer , Ph.D. is an Assistant Professor in the Department of Computer Science and Engineering at the University of Notre Dame. He has extensive experience in the areas of artificial intelligence, computer vision, machine learning and the digital humanities. His overarching research interest is the fundamental problem of recognition, including the representations and algorithms supporting solutions to it.
Walter J. Scheirer , Ph.D. is an Assistant Professor in the Department of Computer Science and Engineering at the University of Notre Dame. He has extensive experience in the areas of artificial intelligence, computer vision, machine learning and the digital humanities. His overarching research interest is the fundamental problem of recognition, including the representations and algorithms supporting solutions to it.
Content
What is Quantitative Intertextuality.- Statistical Learning as a Model for Intertextuality.- Lexical Matching: Text Reuse as Intertextuality.- Semantic Matching: Tracing Reuse by Meaning.- Sound Matching: Capturing Reuse in the Primitive Elements of Language.- Image Matching: Detecting the Reuse of Visual Elements.- Meta-Matching: Combining Evidence From Heterogeneous Sources.- Parting Thoughts.