Astrostatistics class for the MSc degree in Astrophysics at the University of Milan-Bicocca (Italy)

Overview

Astrostatistics

Davide Gerosa - [email protected]
University of Milano-Bicocca, 2022.

Binder

Schedule

  1. Introduction
  2. Probability and Statistics I
  3. Probability and Statistics II
  4. Probability and Statistics III
  5. Classical/Frequentist Statistical Inference: I
  6. Classical/Frequentist Statistical Inference: II
  7. Classical/Frequentist Statistical Inference: III

Aims

The use of statistics is ubiquitous in astronomy and astrophysics. Modern advances are made possible by the application of increasingly sophisticated tools, often dubbed as "data mining", "machine learning", and "artificial intelligence". This class provides an introduction to (some of) these statistical techniques in a very practical fashion, pairing formal derivations to hands-on computational applications. Although examples will be taken almost exclusively from the realm of astronomy, this class is appropriate to all Physics students interested in machine learning.

Important

Data mining and machine learning are computational subjects. One does not understand how to treat scientific data by reading equations on the blackboard: you will need to get your hands dirty (and this is the fun part!). Students are required to come to classes with a computer or any device where you can code on (larger than a smartphone I would say...). Each class will pair theoretical explanations to hands-on exercises and demonstrations. These are the key content of the course, so please engage with them as much a possible.

Conceptual map of the class

Steve_map

Credits: Steve Taylor (Vanderbilt)

Textbook and Resources

The main textbook we will be using is:

"Statistics, Data Mining, and Machine Learning in Astronomy", Željko, Andrew, Jacob, and Gray. Princeton University Press, 2012.

It's a wonderful book that I keep on referring to in my research. The library has a few copies. What I really like about that book is that they provide the code behind each single figure: astroml.org/book_figures. The best way to approach these topics is to study the introduction on the book, then grab the code and try to play with it.  Make sure you get the updated edition of the book (that's the one with a black cover, not orange) because all the examples have been updated to python 3. 

There are many other good resources in astrostatistics, here is a partial list. Some of them are free.

We will make heavy usage of the python programming language. If you need to refresh your python skills, here are some catch-up resources and online tutorials. A strong python programming background is essential in modern astrophysics! 

Credits

This class draws heavily from many others that came before me. Credit goes to:

Owner
Davide Gerosa
Associate Professor at the University of Milan-Bicocca: research in relativistic astrophysics, gravitational waves, and general relativity.
Davide Gerosa
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