Description of Individual Course Units
|
Offered By |
Graduate School of Natural and Applied Sciences |
Level of Course Unit |
Second Cycle Programmes (Master's Degree) |
Course Coordinator |
ASSOCIATE PROFESSOR IDIL YAVUZ |
Offered to |
Statistics (English) |
Course Objective |
With the rise of big, high dimensional and high frequency (occasionally streaming) data, machine learning methods have become inevitably necessary for prediction and classification purposes in many fields. This course aims to give an introduction to popular machine learning methods with a focus on the statistical concepts utilized underneath them. Keeping this goal in mind, mainly supervised statistical learning will be discussed but clustering will also be covered. The class will introduce predictive approaches (splines, additive models and GAM, regression trees, neural networks, k-nearest neighbor), classification tools (support vector machines and random forests) and clustering; while keeping a close eye on statistical concepts like parameter estimation, inference and model and variable selection. |
Learning Outcomes of the Course Unit |
||||||||||||
|
Mode of Delivery |
Face -to- Face |
Prerequisites and Co-requisites |
None |
Recomended Optional Programme Components |
None |
Course Contents |
|||||||||||||||||||||||||||||||||||||||||||||
|
Recomended or Required Reading |
Textbook(s):Data Analysis and Data Mining: An Introduction, Adelchi Azzalini and Bruno Scarpa, Oxford, 2012 |
Planned Learning Activities and Teaching Methods |
Lecture, homework, presentation. |
Assessment Methods |
||||||||||||||||||||||||||||
*** Resit Exam is Not Administered in Institutions Where Resit is not Applicable. |
Further Notes About Assessment Methods |
None |
Assessment Criteria |
Evaluation of homework assignments, presentation and exams. |
Language of Instruction |
English |
Course Policies and Rules |
Attendance to at least 70% for the lecturesis an essential requirement of this course and is the responsibility of the student. It is necessary that attendance to the lecture and homework delivery must be on time. Any unethical behavior that occurs either in presentations or in exams will be dealt with as outlined in school policy. You can find the graduate policy at http://www.fbe.deu.edu.tr. |
Contact Details for the Lecturer(s) |
e-mail: idil.yavuz@deu.edu.tr |
Office Hours |
To be announced. |
Work Placement(s) |
None |
Workload Calculation |
||||||||||||||||||||||||||||||||||||||||
|
Contribution of Learning Outcomes to Programme Outcomes |
|||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
|