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  1. Text analytics for corpus linguistics and digital humanities
    simple R Scripts and Tools
    Published: 2024
    Publisher:  Bloomsbury Academic, London

    Do you want to gain a deeper understanding of how big tech analyzes and exploits our text data, or investigate how political parties differ by analyzing textual styles, associations and trends in documents? Or create a map of a text collection and... more

    Access:
    Resolving-System (lizenzpflichtig)
    Staatsbibliothek zu Berlin - Preußischer Kulturbesitz, Haus Potsdamer Straße
    No inter-library loan
    Staats- und Universitätsbibliothek Bremen
    No inter-library loan
    Universitäts- und Landesbibliothek Sachsen-Anhalt / Zentrale
    No inter-library loan
    Universität Potsdam, Universitätsbibliothek
    No inter-library loan

     

    Do you want to gain a deeper understanding of how big tech analyzes and exploits our text data, or investigate how political parties differ by analyzing textual styles, associations and trends in documents? Or create a map of a text collection and write a simple QA system yourself? This book explores how to apply state-of-the-art text analytics methods to detect and visualize phenomena in text data. Solidly based on methods from corpus linguistics, natural language processing, text analytics and digital humanities, this book shows readers how to conduct experiments with their own corpora and research questions, underpin their theories, quantify the differences and pinpoint characteristics. Case studies and experiments are detailed in every chapter using real-world and open access corpora from politics, World English, history, and literature. The results are interpreted and put into perspective, pitfalls are pointed out, and necessary pre-processing steps are demonstrated. This book also demonstrates how to use the programming language R, as well as simple alternatives and additions to R, to conduct experiments and employ visualisations by example, with extensible R-code, recipes, links to corpora, and a wide range of methods. The methods introduced can be used across texts of all disciplines, from history or literature to party manifestos and patient reports

     

    Export to reference management software   RIS file
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    Source: Staatsbibliothek zu Berlin
    Language: English
    Media type: Ebook
    Format: Online
    ISBN: 9781350370852; 9781350370838; 9781350370845
    Other identifier:
    Series: Language, data science and digital humanities
    Subjects: Digital humanities; Text data mining; R (Computer program language); Corpora (Linguistics); Digital humanities; Computational linguistics; Data analysis: general; linguistics
    Scope: 1 Online-Ressource (xii, 228 Seiten)
    Notes:

    Includes bibliographical references and index

    List of Figures List of Tables Acknowledgements 1. Introduction 2. Spikes of Frequencies and First Steps in UNIX 3. Frequency Lists and First Steps in R 4. Overuse and Keywords and Using R Libraries 5. Document Classification and Supervised ML in LightSide and R 6. Topic Modelling and Unsupervised ML with Mallet and R 7. Kernel Density Estimation for Conceptual Maps 8. Distributional Semantics 9. BERT Models 10. Conclusions References Index

  2. Text analytics for corpus linguistics and digital humanities
    simple R scripts and tools
    Published: 2024
    Publisher:  Bloomsbury Academic, London

    Intro -- Half Title -- Series Page -- Title Page -- Copyright Page -- Contents -- Figures -- Tables -- Acknowledgements -- Chapter 1: Introduction -- Chapter 2: Spikes of Frequencies -- Chapter 3: Frequency Lists -- Chapter 4: Overuse and Keywords --... more

    Access:
    Aggregator (lizenzpflichtig)
    Technische Universität Chemnitz, Universitätsbibliothek
    No inter-library loan
    Universitätsbibliothek Clausthal
    No inter-library loan
    Hochschulbibliothek Friedensau
    Online-Ressource
    No inter-library loan
    Universität Ulm, Kommunikations- und Informationszentrum, Bibliotheksservices
    No inter-library loan

     

    Intro -- Half Title -- Series Page -- Title Page -- Copyright Page -- Contents -- Figures -- Tables -- Acknowledgements -- Chapter 1: Introduction -- Chapter 2: Spikes of Frequencies -- Chapter 3: Frequency Lists -- Chapter 4: Overuse and Keywords -- Chapter 5: Document Classification -- Chapter 6: Topic Modelling -- Chapter 7: Kernel Density Estimation for Conceptual Maps -- Chapter 8: Distributional Semantics and Word Embeddings -- Chapter 9: BERT and GPT-x Models -- Chapter 10: Conclusion -- Notes -- References -- Index. "Helping to understand and apply state-of-the-art text analytics methods to detect and visualize phenomena in text data, this book shows readers how to conduct experiments with their own corpora and research questions, underpin their theories, quantify the differences and pinpoint characteristics. It also demonstrates how to use the programming language R, as well as simple alternatives and additions to R, to conduct experiments and employ visualisations by example, with extensible R-code, recipes, links to corpora, and a wide range of methods. The methods introduced can be used across texts of all disciplines, from history or literature to party manifestos and patient reports"--

     

    Export to reference management software   RIS file
      BibTeX file
    Source: Union catalogues
    Language: English
    Media type: Ebook
    Format: Online
    ISBN: 9781350370845; 9781350370838
    Series: Language, Data Science and Digital Humanities
    Subjects: Text data mining; R (Computer program language); Corpora (Linguistics); Digital humanities
    Scope: 1 Online-Ressource (xii, 228 Seiten)
    Notes:

    Description based on publisher supplied metadata and other sources