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Presentation on Bayesian Learning by Pradeep Gowda

  • First of a multi-part series on Bayesian analysis
  • Covered some basic background and then focused in on a analysis of conditional inferences of positive cancer screenings.

Presentation on Generalization by Sheamus Parkes

Very Basic Notes:

  • Classic bias variance curve
    • Best algorithms let you walk the tradeoff
    • It's all just ridging
      • Random forest is a bit different
  • Subtle overfitting sources…
    • Tuning one (or two) hyperparameters won't overfit... Tuning many algorithms and picking the best will overfit
    • Not including feature selection as part of the tuning process

Links Mentioned: