Module M3 aims at providing insights into the most foundational architectures of deep learning algorithms within both supervised and unsupervised learning, thus building a strong foundation for further exploration of more specific and cutting-edge techniques. Real-world problems that are approached with the techniques covered in this module include the development of advanced recommender systems (marketing), computer vision models (healthcare, economics), powerful unsupervised pattern recognition systems (fraud detection or credit default prediction in finance) and (attempts of) stock market index prediction.
Upon completion, students will acquire theoretical and practical knowledge, enabling them to understand and explain central techniques and concepts of deep learning approaches as well as the fundamentals of artificial intelligence for analytics. They will be able to select and apply appropriate methods to real-world problems and critically reflect on them.
The objective is that the student after the module possesses the necessary knowledge on:
The objective is that the student after the module possesses the necessary skills in:
The objective is that the student after the module possesses the necessary competences in:
For information see §17.
Name of exam | M3: Deep Learning and Artificial Intelligence for Analytics |
Type of exam | Oral exam
Group examination with max. 6 students. |
ECTS | 5 |
Assessment | 7-point grading scale |
Type of grading | Internal examination |
Criteria of assessment | The criteria of assessment are stated in the Examination Policies and Procedures |
Danish title | M3: Deep Learning and Artificial Intelligence for Analytics |
Module code | KAØKO202120 |
Module type | Course |
Duration | 1 semester |
Semester | Autumn
|
ECTS | 5 |
Language of instruction | English |
Location of the lecture | Campus Aalborg |
Responsible for the module |
Study Board | Study Board of Economics (cand.oecon) |
Department | Aalborg University Business School |
Faculty | Faculty of Social Sciences and Humanities |