Garbage Data In, Garbage Models Out - How to Select the Right Data for Robust Machine Learning

Garbage Data In, Garbage Models Out - How to Select the Right Data for Robust Machine Learning

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Intro

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Intro

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Garbage Data In, Garbage Models Out - How to Select the Right Data for Robust Machine Learning

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  1. 1 Intro
  2. 2 Learning machine learning
  3. 3 Basic model types
  4. 4 The danger of assumptions
  5. 5 What do our features mean?
  6. 6 How do we see how good a model is?
  7. 7 Reserve data for testing
  8. 8 Missing values
  9. 9 Detecting outliers
  10. 10 Adjusting for class imbalance
  11. 11 Curse of dimensionality
  12. 12 Feature engineering
  13. 13 Creating generalisable models
  14. 14 Selection bias
  15. 15 Survivorship bias
  16. 16 How does your model make predictions?
  17. 17 Are you using the right metrics?
  18. 18 Is newer and shiner better?

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