Big Data Applications for Finance
Module code: ECN384
Credits: 15.0
Semester: SEM1
Contact: Ms Ioanna Lachana
Prerequisite: Before taking this module you must take ECN226
The primary purpose of this course is not to teach statistical methods, but to facilitate their use and the financial and economic interpretation of empirical estimates. We, therefore, will study tools and applications at the same time. At the end of the course, students will be able to use modern empirical techniques such as machine learning on large financial datasets, assess the informativeness of empirical estimates and their use in financial markets and visualize complex information sets. Students will be able to apply these tools to specific financial markets (for e.g. credit markets) and in asset management.
Connected course(s): UDF DATA
Assessment: 70.0% Coursework, 30.0% Examination
Level: 6