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INF2-FDS: S1 Week 8 Lab

In your lab session, work with a partner through the Jupyter notebook S1 Week 06: Linear Models, which is available from this Github repository https://github.com/Inf2-FDS/FDS-S1-06-linear-models.git

(Note that the reason for "Week 06" in the title is that due to various constraints, we've had to change the normal order of the course this year.)

In the lab you will:

  • Apply linear regression using the statsmodels package
  • Interpret some of the visual and numerical diagnostics from the package
  • Transform variables to produce a better model of the data
  • Apply multiple regression to some data
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Book traversal links for INF2-FDS: S1 Week 8 Lab

  • INF2-FDS: S1 Week 8 - Multiple regression
  • Up
  • INF2-FDS: S1 Week 9 - Dealing with high dimensions

Navigation links

  • INF2-FDS: Course team
  • INF2-FDS: Schedule
  • INF2-FDS: Course Materials
    • INF2-FDS: S1 Week 1 - Introduction and Data
    • INF2-FDS: S1 Week 2 - Descriptive statistics
    • INF2-FDS: S1 Week 3 - Exploratory data analysis, data communication and visualisation
    • INF2-FDS: S1 Week 4 - Data Ethics, Data Scraping and statistical relationships
    • INF2-FDS: S1 Week 5 - Introduction to supervised learning - Nearest Neighbours
    • INF2-FDS: S1 Week 6 - Linear models
    • INF2-FDS: S1 Week 7 - Coursework 1
    • INF2-FDS: S1 Week 8 - Multiple regression
      • INF2-FDS: S1 Week 8 Lab
    • INF2-FDS: S1 Week 9 - Dealing with high dimensions
    • INF2-FDS: S1 Week 10 - Randomness, sampling and simulation
    • INF2-FDS: S1 Week 11 - Estimation and confidence intervals
    • INF2-FDS: S2 Week 1 - Hypothesis testing and A/B testing
    • INF2-FDS: S2 Week 2 - Logistic regression
    • INF2-FDS: S2 Week 3 - Introduction to unsupervised learning - K-means
    • INF2-FDS: S2 Week 4 - Ethical and legal issues in supervised learning
    • INF2-FDS: S2 Week 5 - Regression and inference
    • INF2-FDS: S2 Week 6 - Software engineering for data science
    • INF2-FDS: S2 Week 8 Project writing workshop
    • INF2-FDS: Revision
  • INF2-FDS: Labs
  • INF2-FDS: Workshops
  • INF2-FDS: Resource List
  • INF2-FDS: Assessment
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