Resources

Diving into this (edifying) material should be of keen interest to those taking the class, but do not consider these formal reading assignments.

Topic Specific Readings

Model Fitting

  • “Data analysis recipes: Fitting a model to data” (Hogg et al. 2010). “We go through the many considerations involved in fitting a model to data, using as an example the fit of a straight line to a set of points in a two-dimensional plane.”

  • “Data Analysis Recipes: Using Markov Chain Monte Carlo” (Hogg and Foreman-Mackey 2018) “In this primarily pedagogical contribution, we give a brief overview of the most basic MCMC method and some practical advice for the use of MCMC in real inference problems.”

  • “Data analysis recipes: Probability calculus for inference” (Hogg 2012) “…I review the rules by which probability distribution functions can (and cannot) be combined. I connect these rules to the operations performed in probabilistic data analysis…The applications of probability calculus in constructing likelihoods, marginalized likelihoods, posterior probabilities, and posterior predictions are all discussed.”

  • “Bayesian Methods for Hackers” (Cameron Davidson-Pilon) “An intro to Bayesian methods and probabilistic programming from a computation/understanding-first, mathematics-second point of view.”

Periodograms

Gaia Variable Star References

Other Readings

Blogs/Online Material of Interest

Books

Packages and Code


Table of contents