Skip to Content
Machine learning with R: expert techniques for predictive modeling

Machine learning with R: expert techniques for predictive modeling

Lantz, Brett

Paperback, Book. English.
3rd.
Published Birmingham: Packt, 2019
Rate this

Available at all branches.

This item is not reservable because:

  • There are no reservable copies for this title. Please contact a member of library staff for further information.
  • National College Library – Five available in Main Lending, Desk Reserve 519.50285 and Main Lending 519.50285

    Barcode Shelfmark Loan type Status
    39006010684282 Main Lending 519.50285 Main Lending Available
    39006010684274 Main Lending 519.50285 Main Lending Available
    39006010684043 Main Lending 519.50285 Main Lending Available
    39006010684290 Main Lending 519.50285 Main Lending Available
    39006010683961 Desk Reserve 519.50285 Desk Reserve Available
    Main Lending Main Lending Please ask
    Main Lending Main Lending Please ask
    Main Lending Main Lending Please ask
    39006010683987 Main Lending 519.50285 Main Lending In transit
    39006010689679 Main Lending Main Lending Due back 6th November
    39006010684027 Main Lending 519.50285 Main Lending Due back 6th November
    39006010684035 Main Lending 519.50285 Main Lending Due back 6th November
    39006010683995 Main Lending 519.50285 Main Lending Due back 6th November
    39006010684001 Main Lending 519.50285 Main Lending Due back 21st November
    39006010683979 Main Lending 519.50285 Main Lending Due back 27th November
    39006010684019 Main Lending 519.50285 Main Lending Due back 29th November

Details

Statement of responsibility: Brett Lantz
ISBN: 1788295862, 9781788295864
Physical Description: xiii, 437 p.: ill. ; 24 cm.
Subject: R (Computer program language); Statistics Data processing; Machine learning

Contents

  1. Introducing machine learning
  2. Managing and understanding data
  3. Lazy learning - classification using nearest neighbours
  4. Probalistic learning - classification using Naive Bayes
  5. Divide and conquer - classification using decision trees and rules
  6. Forecasting numeric data - regression methods
  7. Black box methods - neural networks and support vector machines
  8. Finding patterns - market basket analyis using association rules
  9. Finding groups of data - clustering with k-means
  10. Evaluating model performance
  11. Improving model performance
  12. Specialized machine learning topics
  13. Index.