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 |
PROFESSOR DOCTOR NESLIHAN DEMIREL |
Offered to |
Data Science |
Course Objective |
Supervised statsitical leraning (SSL) involves building a statistical model for predicting, or estimating, an output based on one or more inputs. SSL tools can be categorised as regression and classification. This course will include most popular regression and classification methods such as linear regression model, logistic regression model, linear and quadratic discrimanant analysis, splines, general additive models, regression and classification trees and random forest. Students will also have a good sense for how to evaluate performance of those methods. They will be using R for analyzing the data with tools of SSL. |
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 |
Textbook(s): |
Planned Learning Activities and Teaching Methods |
Lecture, class discussion, homeworks. |
Assessment Methods |
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Further Notes About Assessment Methods |
None |
Assessment Criteria |
To be announced. |
Language of Instruction |
Turkish |
Course Policies and Rules |
To be announced. |
Contact Details for the Lecturer(s) |
Assoc. Prof. Dr. Neslihan DEMIREL |
Office Hours |
Send an e-mail for a meeting request. |
Work Placement(s) |
None |
Workload Calculation |
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Contribution of Learning Outcomes to Programme Outcomes |
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