Original author is Magnus Erik Hvass Pedersen
This is a small collection of research papers on long-term investing. They are written as Python Notebooks so they can be easily modified and run again.
There is a YouTube video for each research paper.
- Forecasting Long-Term Stock Returns (Notebook)
The Python Notebooks use source-code located in different files to allow for easy re-use across multiple Notebooks. It is therefore recommended that you download the whole repository from GitHub, instead of just downloading the individual Python Notebooks.
The easiest way to download and install this is by using git from the command-line:
git clone https://github.com/Hvass-Labs/FinanceOps.git
This creates the directory FinanceOps
and downloads all the files to it.
This also makes it easy to update the files, simply by executing this command inside that directory:
git pull
You can also download the contents of the GitHub repository as a Zip-file and extract it manually.
It is suggested that you use the Anaconda
distribution of Python 3.6 (or later) because it has all the required packages
already installed. Once you have installed Anaconda, you run the following
command from the FinanceOps
directory to view and edit the Notebooks:
jupyter notebook
If you want to edit the other source-code then you may use the free version of PyCharm.
- Price data from Yahoo Finance.
- Financial data for individual stocks collected manually by the author from the 10-K Forms filed with the U.S. SEC.
- Newer S&P 500 data from the S&P Earnings & Estimates Report and older data from the research staff at S&P and Compustat (some older data is approximated by their research staff).
- The inflation index is: All Items Consumer Price Index for All Urban Consumers (CPI-U), U.S. City Average. From the US Department of Labor, Bureau of Labor Statistics.
These Python Notebooks and source-code are published under the MIT License which allows very broad use for both academic and commercial purposes.
You are very welcome to modify and use the source-code in your own project. Please keep a link to the original repository.
The financial data is not covered by the MIT license and may have limitations on commercial redistribution, etc.