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Machine learning methods for stylome...
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Savoy, Jacques.
Machine learning methods for stylometryauthorship attribution and author profiling /
紀錄類型:
書目-電子資源 : Monograph/item
正題名/作者:
Machine learning methods for stylometryby Jacques Savoy.
其他題名:
authorship attribution and author profiling /
作者:
Savoy, Jacques.
出版者:
Cham :Springer International Publishing :2020.
面頁冊數:
xix, 286 p. :ill., digital ;24 cm.
Contained By:
Springer Nature eBook
標題:
Natural language processing (Computer science)
電子資源:
https://doi.org/10.1007/978-3-030-53360-1
ISBN:
9783030533601$q(electronic bk.)
Machine learning methods for stylometryauthorship attribution and author profiling /
Savoy, Jacques.
Machine learning methods for stylometry
authorship attribution and author profiling /[electronic resource] :by Jacques Savoy. - Cham :Springer International Publishing :2020. - xix, 286 p. :ill., digital ;24 cm.
Part I: Fundamental Concepts and Models -- 1. Introduction to Stylistic Models and Applications -- 2. Basic Lexical Concepts and Measurements -- 3. Distance-Based Approaches -- Part II: Advanced Models and Evaluation -- 4. Evaluation Methodology and Test Corpora -- 5. Features Identification and Selection -- 6. Machine Learning Models -- 7. Advanced Models for Stylometric Applications -- Part III: Cases Studies -- 8. Elena Ferrante: A Case Study in Authorship Attribution -- 9. Author Profiling of Tweets -- 10. Applications to Political Speeches -- 11. Conclusion.
This book presents methods and approaches used to identify the true author of a doubtful document or text excerpt. It provides a broad introduction to all text categorization problems (like authorship attribution, psychological traits of the author, detecting fake news, etc.) grounded in stylistic features. Specifically, machine learning models as valuable tools for verifying hypotheses or revealing significant patterns hidden in datasets are presented in detail. Stylometry is a multi-disciplinary field combining linguistics with both statistics and computer science. The content is divided into three parts. The first, which consists of the first three chapters, offers a general introduction to stylometry, its potential applications and limitations. Further, it introduces the ongoing example used to illustrate the concepts discussed throughout the remainder of the book. The four chapters of the second part are more devoted to computer science with a focus on machine learning models. Their main aim is to explain machine learning models for solving stylometric problems. Several general strategies used to identify, extract, select, and represent stylistic markers are explained. As deep learning represents an active field of research, information on neural network models and word embeddings applied to stylometry is provided, as well as a general introduction to the deep learning approach to solving stylometric questions. In turn, the third part illustrates the application of the previously discussed approaches in real cases: an authorship attribution problem, seeking to discover the secret hand behind the nom de plume Elena Ferrante, an Italian writer known worldwide for her My Brilliant Friend's saga; author profiling in order to identify whether a set of tweets were generated by a bot or a human being and in this second case, whether it is a man or a woman; and an exploration of stylistic variations over time using US political speeches covering a period of ca. 230 years. A solutions-based approach is adopted throughout the book, and explanations are supported by examples written in R. To complement the main content and discussions on stylometric models and techniques, examples and datasets are freely available at the author's Github website.
ISBN: 9783030533601$q(electronic bk.)
Standard No.: 10.1007/978-3-030-53360-1doiSubjects--Topical Terms:
200539
Natural language processing (Computer science)
LC Class. No.: QA76.9.N38 / S28 2020
Dewey Class. No.: 006.35
Machine learning methods for stylometryauthorship attribution and author profiling /
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This book presents methods and approaches used to identify the true author of a doubtful document or text excerpt. It provides a broad introduction to all text categorization problems (like authorship attribution, psychological traits of the author, detecting fake news, etc.) grounded in stylistic features. Specifically, machine learning models as valuable tools for verifying hypotheses or revealing significant patterns hidden in datasets are presented in detail. Stylometry is a multi-disciplinary field combining linguistics with both statistics and computer science. The content is divided into three parts. The first, which consists of the first three chapters, offers a general introduction to stylometry, its potential applications and limitations. Further, it introduces the ongoing example used to illustrate the concepts discussed throughout the remainder of the book. The four chapters of the second part are more devoted to computer science with a focus on machine learning models. Their main aim is to explain machine learning models for solving stylometric problems. Several general strategies used to identify, extract, select, and represent stylistic markers are explained. As deep learning represents an active field of research, information on neural network models and word embeddings applied to stylometry is provided, as well as a general introduction to the deep learning approach to solving stylometric questions. In turn, the third part illustrates the application of the previously discussed approaches in real cases: an authorship attribution problem, seeking to discover the secret hand behind the nom de plume Elena Ferrante, an Italian writer known worldwide for her My Brilliant Friend's saga; author profiling in order to identify whether a set of tweets were generated by a bot or a human being and in this second case, whether it is a man or a woman; and an exploration of stylistic variations over time using US political speeches covering a period of ca. 230 years. A solutions-based approach is adopted throughout the book, and explanations are supported by examples written in R. To complement the main content and discussions on stylometric models and techniques, examples and datasets are freely available at the author's Github website.
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