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Sungkyunkwan University

R for Regression and Machine Learning in Investment

Sungkyunkwan University via FutureLearn

Overview

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Boost your R programming skills and learn the core concepts of machine learning

Data is an essential tool for every sector, including investments. With data analytics, investment strategies, portfolio management, and decision-making are algorithm and data-driven, reducing the risk factors associated with investment.

This two-week course from Sungkyunkwan University (SKKU) will introduce you to fundamental machine learning and regression methodologies and help you improve your R programming skills to use data analysis in solving investment problems.

Understand how to use regression for data analysis of investments

This course will guide you through using regression methodology for various investment analysis purposes by using Ridge, Lasso, and logistic regression.

You’ll begin by gauging investment strategy using backtesting and learn about regression methodology, how to solve classification problems with logistic regression, and analyse data using the Fama-Macbeth Regression method.

Create a machine learning model to predict the movement of the stock market

On this course, you’ll take the first step toward using machine learning methodologies in solving investment problems.

Not only will you develop a firm grasp on the core concepts of machine learning, but you’ll also learn about machine learning models that are used to predict the movement of the stock market and create your own macro factor model using R programming.

Learn with the experts at Sungkyunkwan University

The instructor of this course has more than 15 years of experience with algorithmic trading and investment portfolio management experience in the G10 markets at Wall Street major firms.

With her expertise and guidance, you’ll be well-equipped to apply regression and machine learning methods to real data and improve your investment strategies.

This course is designed for anyone with financial economics and R programming knowledge, who is interested in learning how to apply advanced regression methods to real data and concepts of machine learning.

You should already be familiar with basic R programming to benefit from this course.

Download R and R Studio or use RStudio Cloud

Syllabus

  • Understanding algorithm-driven investment decision-making.
    • Welcome to the course!
    • Brief History on Investing, Machine Learning and Alternative Data.
    • Ingredients for Maching Learning Based Investment
    • Big Picture of Algorithm-Driven Investment.
    • Understanding the Characteristics of Factors.
    • Understanding Machine Learning Concepts.
    • Summary of WEEK 1
  • Regression and beyond.
    • Handling Data with Different Frequencies.
    • Analyzing Data Using Fama-Macbeth Regression.
    • Predictive Models.
    • Making a Model that Performs Well in Real Life.
    • Logistic Regression - Solving Classification Problems.
    • Summary of WEEK 2

Taught by

Youngju Nielsen

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