Description

Book Synopsis

The subject of this textbook is to act as an introduction to data science / data analysis applied to finance, using R and its most recent and freely available extension libraries. The targeted academic level is undergrad students with a major in data science and/or finance and graduate students, and of course practitioners or professionals who need a desk reference.

  • Assumes no prior knowledge of R
  • The content has been tested in actual university classes
  • Makes the reader proficient in advanced methods such as machine learning, time series analysis, principal component analysis and more
  • Gives comprehensive and detailed explanations on how to use the most recent and free resources, such as financial and statistics libraries or open database on the internet


Table of Contents

1. Your Working Environment 2. Reading Data in R 3. Financial Data 4. Introduction to R 5. Functions 6. Data Transformation 7. Merging Data Sets 8. Graphing Using Ggplot 9. Returns and Returns-based Statistics 10. Portfolios 11. Modeling Returns and Simulations 12. Linear and Polynomial Regression 13. Fixed Income 14. Principal Component Analysis 15. Options 16. Value at Risk 17. Time Series Analysis 18. Machine Learning 19. Presenting the Results of Your Analyses 20. Appendix: Main Packages Seen in this Book

HandsOn Data Analysis in R for Finance

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    £73.14

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    RRP £76.99 – you save £3.85 (5%)

    Order before 4pm today for delivery by Wed 10 Jun 2026.

    A Hardback by Jean-Francois Collard

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      View other formats and editions of HandsOn Data Analysis in R for Finance by Jean-Francois Collard

      Publisher: Taylor & Francis Ltd
      Publication Date: 11/16/2022 12:00:00 AM
      ISBN13: 9781032340975, 978-1032340975
      ISBN10: 1032340975

      Description

      Book Synopsis

      The subject of this textbook is to act as an introduction to data science / data analysis applied to finance, using R and its most recent and freely available extension libraries. The targeted academic level is undergrad students with a major in data science and/or finance and graduate students, and of course practitioners or professionals who need a desk reference.

      • Assumes no prior knowledge of R
      • The content has been tested in actual university classes
      • Makes the reader proficient in advanced methods such as machine learning, time series analysis, principal component analysis and more
      • Gives comprehensive and detailed explanations on how to use the most recent and free resources, such as financial and statistics libraries or open database on the internet


      Table of Contents

      1. Your Working Environment 2. Reading Data in R 3. Financial Data 4. Introduction to R 5. Functions 6. Data Transformation 7. Merging Data Sets 8. Graphing Using Ggplot 9. Returns and Returns-based Statistics 10. Portfolios 11. Modeling Returns and Simulations 12. Linear and Polynomial Regression 13. Fixed Income 14. Principal Component Analysis 15. Options 16. Value at Risk 17. Time Series Analysis 18. Machine Learning 19. Presenting the Results of Your Analyses 20. Appendix: Main Packages Seen in this Book

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