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Π.Μ.Σ στη «Χρηματοοικονομική Τεχνολογία (FinTech)»

M.Sc. in Financial Technology (FinTech)

Artificial Intelligence and Machine Learning in Finance

1st Semester, Course Code: ΜΕΧΤΕ103

Credits: 7,5

Learning Outcomes

This course aims to provide students with a comprehensive understanding of machine learning techniques and their applications in the financial industry. Through a combination of theoretical concepts, practical exercises, and real-world case studies, students will develop the skills necessary to apply machine learning algorithms to financial data, extract insights, and make informed investment and risk management decisions.

General Competences

  • Search for, analysis and synthesis of data and information, with the use of the necessary technology
  • Adapting to new situations
  • Decision-making
  • Working independently
  • Team work
  • Working in an international environment
  • Working in an interdisciplinary environment
  • Production of new research ideas
  • Project planning and management
  • Criticism and self-criticism
  • Production of free, creative and inductive thinking

Course Content

Lecture 1(Theoretical): Linear Classifiers,Linear and Logistic Regression

Lecture 2(Theoretical): Multilayer Neural Networks

Lecture 3(Theoretical): Recurrent Neural Networks

Lecture 4(Theoretical): Support Vector Machines

Lecture 5 (Theoretical): Reinforcement Learning

Lecture 6 (Laboratory): Standard Machine Learning Models for Stock PricePrediction

Lecture 7(Laboratory): Multi-Layer and Recurrent Neural Networks for Stock Price Prediction

Lecture 8(Laboratory): Machine Learning Models for Investor Risk Toleranceand Robo Advisors

Lecture 9(Laboratory): Machine Learning Algorithms for Automated Trading

Lecture 10(Laboratory): Reinforcement Learning Models for Optimal PortfolioAllocation

Student Performance Evaluation

  • Short-Answer Questions 20%
  • Open-Ended Questions 10%
  • Problem Solving 20%
  • Public Presentation 20%
  • Final exam 20%
  • Computational Assignment 10%

Bibliography

Suggested Bibliography

Goodfellow, I., Bengio, Y., & Courville, A. (2016).Deep learning. MIT press.

Aggarwal, Charu C. ”Neural networks and deep learning.”Springer10.978 (2018): 3.

Haykin, Simon, and N. Network. ”A comprehensive foundation.” Neural networks 2.2004 (2004): 41.

Bishop, Christopher M.Neural networks for pattern recognition. Oxford University Press, 1995.

Theodoridis, Sergios, and Konstantinos Koutroumbas.Pattern recognition. Elsevier, 2006.

Related Academic Journals

Journal of Financial Economics

Journal of Finance

Journal of Financial and Quantitative Analysis

Journal of Banking and Finance

Journal of Financial Markets

Journal of Financial Econometrics

Journal of Empirical Finance

Journal of Portfolio Management