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Humanities Data Analysis
Case Studies With Python

Anglais · Livre Relié

Expédition généralement dans un délai de 1 à 3 semaines

Description

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A practical guide to data-intensive humanities research using the Python programming language

The use of quantitative methods in the humanities and related social sciences has increased considerably in recent years, allowing researchers to discover patterns in a vast range of source materials. Despite this growth, there are few resources addressed to students and scholars who wish to take advantage of these powerful tools. Humanities Data Analysis offers the first intermediate-level guide to quantitative data analysis for humanities students and scholars using the Python programming language. This practical textbook, which assumes a basic knowledge of Python, teaches readers the necessary skills for conducting humanities research in the rapidly developing digital environment.

The book begins with an overview of the place of data science in the humanities, and proceeds to cover data carpentry: the essential techniques for gathering, cleaning, representing, and transforming textual and tabular data. Then, drawing from real-world, publicly available data sets that cover a variety of scholarly domains, the book delves into detailed case studies. Focusing on textual data analysis, the authors explore such diverse topics as network analysis, genre theory, onomastics, literacy, author attribution, mapping, stylometry, topic modeling, and time series analysis. Exercises and resources for further reading are provided at the end of each chapter.

An ideal resource for humanities students and scholars aiming to take their Python skills to the next level, Humanities Data Analysis illustrates the benefits that quantitative methods can bring to complex research questions.

  • Appropriate for advanced undergraduates, graduate students, and scholars with a basic knowledge of Python
  • Applicable to many humanities disciplines, including history, literature, and sociology
  • Offers real-world case studies using publicly available data sets
  • Provides exercises at the end of each chapter for students to test acquired skills
  • Emphasizes visual storytelling via data visualizations


A propos de l'auteur










Folgert Karsdorp, Mike Kestemont, and Allen Riddell


Résumé

A practical guide to data-intensive humanities research using the Python programming languageThe use of quantitative methods in the humanities and related social sciences has increased considerably in recent years, allowing researchers to discover patterns in a vast range of source materials. Despite this growth, there are few resources address

Détails du produit

Auteurs Folgert Karsdorp, Allen Riddell, Folgert Riddell Karsdorp, Mike Karsdorp Kestemont, Folgert Kestemont Karsdorp, Mike Kestemont
Edition Princeton University Press
 
Contenu Livre
Forme du produit Livre Relié
Date de parution 31.01.2021
Catégorie Sciences naturelles, médecine, it, technique > Informatique, ordinateurs > Applications, programmes
Sciences sociales, droit, économie > Médias, communication > Sciences des médias
Sciences humaines, art, musique > Histoire > Général, dictionnaires
 
EAN 9780691172361
ISBN 978-0-691-17236-1
Nombre de pages 360
 
Catégories Genre, numpy, machine learning, Media Studies, JSON, xml, Statistics, Handbook, LITERARY CRITICISM / General, case study, MATHEMATICS / General, vocabulary, html, HISTORY / Historiography, Mathematics, SOCIAL SCIENCE / Methodology, scikit-learn, Digital lifestyle, Parsing, recipe, Historiography, Annotation, Calculation, Cluster analysis, data analysis, probability, Literature: history & criticism, Data model, database programming, Media studies: internet, digital media and society, Information technology: general issues, Computer programming / software engineering, Literature: history and criticism, COMPUTERS / Data Science / Data Modeling & Design, COMPUTERS / Design, Graphics & Media / General, Bayesian Inference, Computer Programming / Software Development, statistic, COMPUTERS / Languages / Python, Computer applications in the arts and humanities, Quantitative research, Principal Component Analysis, Data capture and analysis, Data Capture & Analysis, Normal Distribution, punctuation, Random Variable, inference, least squares, probability distribution, topic model, Bayesian, ingredient, Exploratory Data Analysis, Data Set, Stylometry, Result, Hierarchical Clustering, Histogram, family resemblance, Instance (computer science), Variable (computer science), Variable (mathematics), Subset, Accuracy and precision, Respondent, Bayes' theorem, Processing (programming language), Ranking (information retrieval), Summary statistics, Parameter (computer programming), Python (programming language), Mixture model, Chain letter, Namespace, Source lines of code, For loop, Latent Dirichlet allocation, Text corpus, Naming convention (programming), Interquartile range, Pandas (software), Document-term matrix, Taxicab geometry, Function word, Vector space model, Cosine Similarity, statistical classification, Bigram, LibreOffice Calc, Categorical distribution
 

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