Classification-Based Machine Learning for Finance

Hands on guide on using classification based Machine Learning techniques with application in finance and investment

   Watch Promo   Enroll in Course

Finally, a comprehensive hands-on machine learning course with specific focus on classification based models for the investment community and passionate investors.

In the past few years, there has been a massive adoption and growth in the use of data science, artificial intelligence and machine learning to find alpha. However, information on and application of machine learning to investment are scarce. This course has been designed to address that. It is meant to spark your creative juices and get you started in this space.

In this course, we are first going to provide some background information to machine learning. To ease you into the machine learning lingo, we start will something that most people are familiar with – Logistic Regression. The assumptions of financial time series as well as the stylized facts are introduced and explained at length due to its importance. The assumptions of linear regression are also highlighted to demonstrate the challenges and danger of blindly applying machine learning to investment without proper care and considerations to the nuances of financial time series.

After covering the basics of classification based machine learning using logistic regression, we then move on to more advanced topics covering other classification machine learning algorithms such as Linear Discriminant Analysis, Quadratic Discriminant Analysis, Stochastic Gradient Descent classifier, Nearest Neighbors, Gaussian Naive Bayes and many more. We follow the foundations that we started in the first regression based machine learning course covering cross-validation, model validation, back test, professional Quant work flow, and much more.

This course not only covers machine learning techniques, it also covers in depth the rationale of investing strategy development.

This course is the second of the Machine Learning for Finance and Algorithmic Trading & Investing Series. The courses in the series includes:

  • Regression-Based Machine Learning for Algorithmic Trading
  • Classification-Based Machine Learning for Algorithmic Trading
  • Ensemble Machine Learning for Algorithmic Trading
  • Unsupervised Machine Learning: Hidden Markov for Algorithmic Trading
  • Clustering and PCA for Investing

If you are looking for a course on applying machine learning to investing, the Machine Learning for Finance and Algorithmic Trading & Investing Series is for you. With over 30 machine learning techniques test cases, which included popular techniques such as Lasso regression, Ridge regression, SVM, XGBoost, random forest, Hidden Markov Model, common clustering techniques and many more, to get you started with applying Machine Learning to investing quickly.


Your Instructor(s)


Anthony Ng
Anthony Ng

Anthony has spent the last 7 years lecturing, consulting and conducting workshops in Singapore covering topics such as algorithmic trading, financial data analytics, banking, finance, investment and portfolio management.Since 2016, he has been assisting Quantopian to conduct Algorithmic Trading Workshops in Singapore and has recently presented in QuantCon Singapore 2017.

Passionate about finance, data science, and Python, he enjoyed researching, teaching and sharing on these topics. He studied Masters of Science in Financial Engineering at NUS Singapore and also hold an MBA, BCom from Otago University.

For more, please visit www.algo-hunter.com


Course Curriculum



Frequently Asked Questions


When does the course start and finish?
The course starts now and never ends! It is a completely self-paced online course - you decide when you start and when you finish.
How long do I have access to the course?
How does lifetime access sound? After enrolling, you have unlimited access to this course for as long as you like - across any and all devices you own.
What if I am unhappy with the course?
We would never want you to be unhappy! If you are unsatisfied with your purchase, contact us in the first 30 days and we will give you a full refund.