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Text and code for the forthcoming second edition of Think Bayes, by Allen Downey.

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ThinkBayes2

Think Bayes is an introduction to Bayesian statistics using computational methods.

This is the repository for the forthcoming second edition; it is a work in progress. If you are reading the first edition of the book, you don't want the code in this repo, yet. Instead, you should go to the repo for the first edition.

You can run the code in this book on Binder by pressing this button:

Binder

The premise of this book, and the other books in the Think X series, is that if you know how to program, you can use that skill to learn other topics.

Most books on Bayesian statistics use mathematical notation and present ideas in terms of mathematical concepts like calculus. This book uses Python code instead of math, and discrete approximations instead of continuous mathematics. As a result, what would be an integral in a math book becomes a summation, and most operations on probability distributions are simple loops.

I think this presentation is easier to understand, at least for people with programming skills. It is also more general, because when we make modeling decisions, we can choose the most appropriate model without worrying too much about whether the model lends itself to conventional analysis. Also, it provides a smooth development path from simple examples to real-world problems.

Think Bayes is a Free Book. It is available under the Creative Commons Attribution-NonCommercial 3.0 Unported License, which means that you are free to copy, distribute, and modify it, as long as you attribute the work and don’t use it for commercial purposes.

Other Free Books by Allen Downey are available from Green Tea Press.

Note: The code is a version ahead of the book. I have not started revising the book yet.

Getting started

To run the examples and work on the exercises in this book, you have to:

  1. Copy my files onto your computer.

  2. Install Python on your computer, along with the libraries we will use.

  3. Run Jupyter, which is a tool for running and writing programs, and load a notebook, which is a file that contains code and text.

The next three sections provide details for these steps.

Copying my files

The code for this book is available from this Git repository. Git is a software tool that helps you keep track of the programs and other files that make up a project. A collection of files under Git's control is called a repository (the cool kids call it a "repo"). GitHub is a hosting service that provides storage for Git repositories and a convenient web interface.

Before you download these files, I suggest you copy my repository on GitHub, which is called forking. If you don't already have a GitHub account, you'll need to create one.

On this home page you should see a gray button in the upper right that says Fork. If you press it, GitHub will create a copy of my repository that belongs to you.

Now, the best way to download the files is to use a Git client, which is a program that manages Git repositories. Here are installation instructions for Windows, macOS, and Linux.

In Windows, I suggest you accept the options recommended by the installer, with two exceptions:

  • As the default editor, choose instead of .

  • For "Configuring line ending conversions", select "Check out as is, commit as is".

For macOS and Linux, I suggest you accept the recommended options.

Once the installation is complete, open a command window. On Windows, open Git Bash, which should be in your Start menu. On macOS or Linux, you can use Terminal.

To find out what directory you are in, type pwd, which stands for "print working directory". On Windows, most likely you are in Users\yourusername. On MacOS or Linux, you are probably in your home directory, /home/yourusername.

The next step is to copy files from your repository on GitHub to your computer; in Git vocabulary, this process is called cloning. Run this command:

git clone https://github.com/YourGitHubUserName/ThinkBayes2

Of course, you should replace YourGitHubUserName with your GitHub user name. After cloning, you should have a new directory called ThinkBayes2.

If you don't want to use Git, you can download my files in a Zip archive. You will need a program like WinZip or gzip to unpack the Zip file. Make a note of the location of the files you download.

Installing Anaconda

You might already have Python installed on your computer, but you might not have the latest version. To use the code in this book, I recommend Python 3.6 or later. Even if you have the latest version, you probably don’t have all of the libraries we need.

You could update Python and install these libraries, but I strongly recommend that you don’t go down that road. I think you will find it easier to use Anaconda, which is a free Python distribution that includes all the libraries you need for this book (and more).

Anaconda is available for Linux, macOS, and Windows. By default, it puts all files in your home directory, so you don’t need administrator (root) permission to install it, and if you have a version of Python already, Anaconda will not remove or modify it.

Start at the Anaconda installation page. Download the installer for your system and run it. You don’t need administrative privileges to install Anaconda, so I recommend you run the installer as a normal user, not as administrator or root.

I suggest you accept the recommended options. On Windows you have the option to install Visual Studio Code, which is an interactive environment for writing programs. You won’t need it for this book, but you might want it for other projects.

The next step is to create a Conda environment that contains the packages you need. Open a command window and run the following commands:

cd ThinkBayes2
conda env create -f environment.yml

You might get a few error messages about packages that are not installed, but we will not need them.

To activate the environment you just created, run

conda activate ThinkBayes2

To test whether the installation was successful, run

python install_test.py

If all is well, a window should appear with a graph.

When you are done working on this book, you might want to deactivate the environment:

conda deactivate

But when you want to work on this book again, you will have to activate the environment again.

If you prefer not to work with Conda environments, you could install the packages you need in the Conda "base" environment. If you run the following commands in the ThinkBayes2 directory, you should get everything you need:

conda install pandas jupyterlab seaborn
pip install .

Running Jupyter

The code for each chapter, and starter code for the exercises, is in Jupyter notebooks. If you have not used Jupyter before, you can read about it here.

To start Jupyter, open a command window (on macOS or Linux, open a Terminal; on Windows, open Git Bash) and run the following commands:

cd ThinkBayes2
jupyter notebook

Jupyter should open a window in a browser, and you should see a list of directories. Click on notebooks to open the directory containing the notebooks. Then click on the first notebook; it should open in a new tab.

In the notebook, press Shift-Enter to run the first few "cells". The first time you run a notebook, it might take several seconds to start, while some Python files get initialized. After that, it should run faster.

You can also launch Jupyter from the Start menu on Windows, from the Dock on macOS, or from the Anaconda Navigator on any system. If you do that, Jupyter might start in your home directory or somewhere else in your file system, so you might have to navigate to find the ThinkBayes2 directory.

I hope these instructions help you get started easily. Please let me know if there is anything I can do to improve them.

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Text and code for the forthcoming second edition of Think Bayes, by Allen Downey.

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