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Redesign ML units #385

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bensoltoff opened this issue Oct 6, 2022 · 6 comments · Fixed by #386
Open

Redesign ML units #385

bensoltoff opened this issue Oct 6, 2022 · 6 comments · Fixed by #386
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@bensoltoff
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Consider Alison Hill's revised tidymodels workshop. Still pretty similar to the old one, but has some distinct adjustments. Worth incorporating into a three-day unit on ML?

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bensoltoff commented Oct 6, 2022

Day 1

  • Keep what I have
  • Incorporate definition of stratified sampling
  • Introduce yardstick for assessing model performance
  • Define ROC AUC

Day 2

  • Keep as is

Day 3

  • Introduce tree-based inference
  • Define decision tree and hyperparameters
  • Fit decision tree and random forest
  • Tune hyperparameters for RF model using tuning grid
  • Identify the best model and finalize the workflow

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Homework

  • Explicitly incorporate tuning for second dataset
  • Replace classification problem with more culturally-sensitive problem

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bensoltoff commented Oct 6, 2022

In-class exercises

Ensure they match the slides.

  • Day 1
  • Day 2
  • Day 3

@bensoltoff bensoltoff linked a pull request Oct 17, 2022 that will close this issue
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Still need to revise hw07

@bensoltoff bensoltoff reopened this Oct 17, 2022
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bensoltoff commented Oct 19, 2022

  • Fix exercise files to be qmd not rmd

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bensoltoff commented Oct 19, 2022

  • Fix roc_curve() slide. Should read
roc_curve(data, truth, ...)

truth = actual outcome

... = probability of one of the outcome classes

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