Machine Learning for Trading Course
Contents
Overview
This course introduces students to the real world challenges of implementing machine learning based trading strategies including the algorithmic steps from information gathering to market orders. The focus is on how to apply probabilistic machine learning approaches to trading decisions. We consider statistical approaches like linear regression, Q-Learning, KNN and regression trees and how to apply them to actual stock trading situations.
This course is composed of three mini-courses:
- Mini-course 1: Manipulating Financial Data in Python
- Mini-course 2: Computational Investing
- Mini-course 3: Machine Learning Algorithms for Trading
Textbooks
We will use the following textbooks:
- For Mini-course 1: Python for Finance by Yves Hilpisch amazon.com
- For Mini-course 2: What Hedge Funds Really Do by Romero and Balch amazon.com
- For Mini-course 3: Machine Learning by Tom Mitchell amazon.com less expensive version at mcgraw hill
Prerequisites/Co-requisites
All types of students are welcome! The Machine Learning topics might be "review" for CS students, while finance parts will be review for finance students. However, even if you have experience in these topics, you will find that we consider them in a different way than you might have seen before, in particular with an eye towards implementation for trading.
If you answer "no" to the following questions, it may be beneficial to refresh your knowledge of the prerequisite material prior to taking CS 7646:
- Do you have a working knowledge of basic statistics, including probability distributions (such as normal and uniform), calculation and differences between mean, median and mode
- Do you understand the difference between geometric mean and arithmetic mean?
- Do you have strong programming skills? Take this quiz compinvesti-prog-quiz if you would like help determining the strength of your programming skills.
Who this course is for: The course is intended for people with strong software programming experience and introductory level knowledge of investment practice. A primary prerequisite is an interest and excitement about the stock market.
Software we'll use: In order to complete the programming assignments you will need to a development environment that you're comfortable with. We use Unix, but you can also work with Windows and Mac OS environments. You must download and install a set of Python modules to your computer (including NumPy, SciPy, and Pandas).
How to install the software: ML4T Software Installation
Grading
- Mini-course 1: Two homework assignments and two programming projects.
- Mini-course 2: Two homework assignments, two programming projects, and a test.
- Mini-course 3: Three programming projects and a test.
Percentage weights for each of these is still being determined.
Required course readings
Readings will be assigned from the textbooks listed above.
Minimum technical requirements
- Browser and connection speed: An up-to-date version of Chrome or Firefox is strongly recommended. We also support Internet Explorer 9 and the desktop versions of Internet Explorer 10 and above (not the metro versions). 2+ Mbps recommended; at minimum 0.768 Mbps download speed.
- Hardware: A computer with at least 4GB of RAM and CPU speed of at least 2.5GHz.
- OS:
- PC: Windows XP or higher with latest updates installed
- Mac: OS X 10.6 or higher with latest updates installed
- Linux: Any recent distribution that has the supported browsers installed
Office hours
To be determined.
Plagiarism
In most cases I expect that all submitted code will be written by you. I will present some libraries in class that you are allowed to use (such as pandas and numpy). Otherwise, all source code, images and write-ups you provide should have been created by you alone.
Instructor information
Announcements
- Piazzalink to piazza
2015 Schedule
Week 1
Week of August 17
Tuesday
- Class overview
Thursday
- MC1 Lesson 1
Week 2
Week of August 24
Tuesday
- MC1 Lesson 2
Thursday
- MC1 Lesson 3
Week 3
Week of August 31
Tuesday
- MC1 Lesson 5
Thursday
- Workshop: Installing Python and Pandas
Week 4
Week of September 7
Monday
- Labor Day
Tuesday
- MC1 Lesson 6
Thursday
- MC1 Lesson 7
Week 5
Week of September 14
Tuesday
Thursday
Week 6
Week of September 21
Tuesday
Thursday
Week 7
Week of September 28
Tuesday
Thursday
Week 8
Week of October 5
Tuesday
Thursday
Week 9
Week of October 12
Tuesday
- No class, fall break
Thursday
Week 10
Week of October 19
Tuesday
Thursday
Sunday
- Last day to drop with grade of W
Week 11
Week of October 26
Tuesday
Thursday
Week 12
Week of November 2
Tuesday
Thursday
Week 13
Week of November 9
Tuesday
Thursday
Week 14
Week of November 16
Tuesday
Thursday
Week 15
Week of November 23
Tuesday
Thursday
- Thanksgiving break: No class
Week 16
Week of November 30
Tuesday
Thursday
Friday
- Last day of classes
Week 17
Final exam week