Description of Individual Course Units
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Offered By |
Graduate School of Natural and Applied Sciences |
Level of Course Unit |
Second Cycle Programmes (Master's Degree) |
Course Coordinator |
ASSISTANT PROFESSOR KADRIYE FILIZ BALBAL |
Offered to |
Ph.D. in Computer Science (English) |
Course Objective |
To provide the students with a comprehensive theoretical and applied study of; deep learning, convolutional neural networks and relevant advanced topics in machine learning and artificial intelligence. To establish in-depth knowledge of deep hierarchies and learning mechanisms in humans, deep vs. shallow architectures, restricted Boltzmann Machines, deep belief networks and their applications to pattern recognition, speech recognition and natural language processing. |
Learning Outcomes of the Course Unit |
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Mode of Delivery |
Face -to- Face |
Prerequisites and Co-requisites |
None |
Recomended Optional Programme Components |
None |
Course Contents |
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Recomended or Required Reading |
Y. Bengio, I. Goodfellow and A. Courville, Deep Learning , MIT Press, 2016. |
Planned Learning Activities and Teaching Methods |
The course is taught in a lecture, class presentation and discussion format. Besides the taught lecture, group presentations are to be prepared by the groups assigned and presented in a discussion session. In some weeks of the course, results of the homework given previously are discussed. |
Assessment Methods |
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Further Notes About Assessment Methods |
None. |
Assessment Criteria |
None. |
Language of Instruction |
English |
Course Policies and Rules |
To be announced. |
Contact Details for the Lecturer(s) |
mete.eminagaoglu@deu.edu.tr |
Office Hours |
Will be announced. |
Work Placement(s) |
None |
Workload Calculation |
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Contribution of Learning Outcomes to Programme Outcomes |
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