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Learning Outcomes Rework #30

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@ericmjl

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@ericmjl

Guidelines

  • Feel free to modify this post to update the learning outcomes. This post is the "master document".
  • Detailed discussion in the thread below; be sure to quote.

Format

This tutorial is split into 2 four-hour segments. The first segment deals with the basics of probability. The second deals with probabilistic programming and model formulation.

This is a very hands-on tutorial, including ample time for exploration and discovery.

Learning Outcomes

At the end of Part 1 of this tutorial, participants will be able to:

  • Describe probability distributions by their "story".
  • Identify cases where data can be modelled by a probability distribution.
  • Describe a generative process for data, using probability distribution stories.
  • TBC

At the end of Part 2 of this tutorial, participants will be able to:

  • Use probability distribution diagrams to draw out a generative model diagrams for:
    • Parameter estimation models.
    • Group comparison models.
    • Hierarchical models.
    • Curve fitting models.
  • Use PyMC3 syntax to implement the above generative models.
  • Diagnose model appropriateness and fit using visual diagnostics.
  • TBC.

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