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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.
The text was updated successfully, but these errors were encountered:
Guidelines
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:
At the end of Part 2 of this tutorial, participants will be able to:
The text was updated successfully, but these errors were encountered: