• A
  • A
  • A
  • ABC
  • ABC
  • ABC
  • А
  • А
  • А
  • А
  • А
Regular version of the site
Bachelor 2024/2025

Computational Methods for Text Analysis

Type: Elective course (Sociology and Social Informatics)
Area of studies: Sociology
When: 3 year, 1, 2 module
Mode of studies: offline
Open to: students of all HSE University campuses
Instructors: Yaroslav Snarski
Language: English
ECTS credits: 5

Course Syllabus

Abstract

For social science research, written text provide essential data for studying media and political discourse, ideology, conflict, sentiment and political affiliation and many other things. With a growing availability of larger digital collections of texts it is tempting to scale the research up in terms of the population studied (e.g. “all social media users of a town”), time spans (e.g. “all of the Post-Soviet history”), and geographical scope (e.g. “all educational migration in Russia”). Computational methods for text analysis are expected to help where traditional content analysis is not feasible. During the course we will cover basic word statistics, various exploratory methods, supervised and unsupervised modeling of text phenomena. Data Culture level (0.2.2 — Basic level: Programming + Data Analysis) will be achieved through studying methods of preprocessing and transformation of text data, as well as supervised and unsupervised methods of text analysis, such as topic modeling, classification, semantic analysis.
Learning Objectives

Learning Objectives

  • provide basic understanding on how to properly use collections of texts as quantitative evidence, and to make this knowledge practical
Expected Learning Outcomes

Expected Learning Outcomes

  • Being able to adequately interpret and report the results of computational text analysis in research papers.
  • Being able to apply computational methods of text analysis (e.g. analysis of word frequency and co-occurrence, document classification, topic modeling) to collections of texts
  • Being able to apply word embedding and clustering methods to downstream tasks, such as sentiment analysis, ideological scaling etc.
  • Understanding multidimenional representation of lexical meaning and the role of the dimensionality reduction.
  • Understanding possibilities of the automated text analysis as well as its pitfalls and important caveats about applying statistical tests to language data.
Course Contents

Course Contents

  • Text Prepocessing
  • Contrastive Analysis
  • Text Classification
  • Topic Modelling
  • Word Embedding
Assessment Elements

Assessment Elements

  • non-blocking Homework
    Studens complete homeworks to emnsure a more complete understaning of materials discussed in the classroom.
  • non-blocking In-class assignment
  • non-blocking Exam
Interim Assessment

Interim Assessment

  • 2024/2025 2nd module
    0.3 * Exam + 0.3 * Homework + 0.4 * In-class assignment
Bibliography

Bibliography

Recommended Core Bibliography

  • Bamman, D., Eisenstein, J., & Schnoebelen, T. (2012). Gender identity and lexical variation in social media. https://doi.org/10.1111/josl.12080
  • Jurafsky, D., Chahuneau, V., Routledge, B. R., & Smith, N. A. (2014). Narrative framing of consumer sentiment in online restaurant reviews. Retrieved from http://search.ebscohost.com/login.aspx?direct=true&site=eds-live&db=edsbas&AN=edsbas.18543C32

Recommended Additional Bibliography

  • Text analysis in R. (2017). Communication Methods and Measures, 11(4), 245–265. https://doi.org/10.1080/19312458.2017.1387238

Authors

  • ZUBAREV NIKITA SERGEEVICH
  • Ильина Мария Ивановна