Course Name |
Advanced Data Analysis
|
Code
|
Semester
|
Theory
(hour/week) |
Application/Lab
(hour/week) |
Local Credits
|
ECTS
|
MATH 658
|
Fall/Spring
|
3
|
0
|
3
|
7.5
|
Prerequisites |
None
|
|||||
Course Language |
English
|
|||||
Course Type |
Elective
|
|||||
Course Level |
Third Cycle
|
|||||
Mode of Delivery | - | |||||
Teaching Methods and Techniques of the Course | Application: Experiment / Laboratory / WorkshopLecture / Presentation | |||||
National Occupation Classification | - | |||||
Course Coordinator | ||||||
Course Lecturer(s) | ||||||
Assistant(s) | - |
Course Objectives | The main objective of this course is to provide a basic understanding of data analysis concepts and to use it in applications with using some statistical software packages. The course will cover basic approaches in statistical inference and data mining, as well as modeling. |
Learning Outcomes |
The students who succeeded in this course;
|
Course Description |
|
Core Courses | |
Major Area Courses | ||
Supportive Courses | ||
Media and Management Skills Courses | ||
Transferable Skill Courses |
Week | Subjects | Related Preparation | Learning Outcome |
1 | Introduction to data analysis, data science, data scientist, data scientist’s toolbox, SPSS, introduction to R environment | R for Data Science, H. Wickham, G. Grolemund, (Ch-1, Ch-2), Introductory Statistics with R, P. Dalgaard (Ch-1) | |
2 | Data structures in R, built-in functions, R packages | Introductory Statistics with R, P. Dalgaard (Ch-1) | |
3 | Random data, density and distribution functions, data import and export, data manipulation | Introductory Statistics with R, P. Dalgaard (Ch-3) | |
4 | Control structures, conditional statements | Introductory Statistics with R, P. Dalgaard (Ch-1.2) | |
5 | Quantitative methods to describe data, relationships between several variables | Introductory Statistics with R, P. Dalgaard (Ch-4) | |
6 | Data visualization, graphical methods to describe data, base graphics system in R, basic graphs | Introductory Statistics with R, P. Dalgaard (Ch-4.2) | |
7 | Advanced graphics in R -1, tidyverse syntax, Advanced graphics in R -2, ggplot2 | R for Data Science, H. Wickham, G. Grolemund, (Ch-3) | |
8 | Midterm Exam | ||
9 | Hypothesis testing, two-sample tests | Introductory Statistics with R, P. Dalgaard (Ch-5) | |
10 | Hypothesis testing, two-sample tests | Introductory Statistics with R, P. Dalgaard (Ch-5) | |
11 | Checking assumptions, goodness of fit tests | Introductory Statistics with R, P. Dalgaard (Ch-5) | |
12 | Simple lineer regression and correlation | Introductory Statistics with R, P. Dalgaard (Ch-6) | |
13 | Dynamic reporting | R for Data Science, H. Wickham, G. Grolemund, (Ch-27) | |
14 | Data mining, basic concepts of statistical learning, supervised learning, unsupervised learning | R for Data Science, H. Wickham, G. Grolemund, (Ch-22) | |
15 | Semester Review | ||
16 | Final Exam |
Course Notes/Textbooks | 1- Introductory Statistics with R, P. Dalgaard, Springer, 2008. ISBN-13: 978-0-387-79054-1. (https://link.springer.com/book/10.1007/978-0-387-79054-1#toc)
2- R for Data Science, H. Wickham, G. Grolemund, 978-1491910399. (https://r4ds.had.co.nz/) |
Suggested Readings/Materials | 1- R in Action: Data Analysis and Graphics with R. 2nd Ed., R. Kabacoff, 2015. 978-1617291388.
2- Practical Data Science with R, N. Zumel and J. Mount, Manning Publications, 2014. 9781617291562. |
Semester Activities | Number | Weigthing |
Participation | ||
Laboratory / Application | ||
Field Work | ||
Quizzes / Studio Critiques | ||
Portfolio | ||
Homework / Assignments | ||
Presentation / Jury |
1
|
10
|
Project |
1
|
20
|
Seminar / Workshop | ||
Oral Exams | ||
Midterm |
1
|
30
|
Final Exam |
1
|
40
|
Total |
Weighting of Semester Activities on the Final Grade |
3
|
60
|
Weighting of End-of-Semester Activities on the Final Grade |
1
|
40
|
Total |
Semester Activities | Number | Duration (Hours) | Workload |
---|---|---|---|
Theoretical Course Hours (Including exam week: 16 x total hours) |
16
|
3
|
48
|
Laboratory / Application Hours (Including exam week: '.16.' x total hours) |
16
|
0
|
|
Study Hours Out of Class |
14
|
4
|
56
|
Field Work |
0
|
||
Quizzes / Studio Critiques |
0
|
||
Portfolio |
0
|
||
Homework / Assignments |
0
|
||
Presentation / Jury |
1
|
23
|
23
|
Project |
1
|
28
|
28
|
Seminar / Workshop |
0
|
||
Oral Exam |
0
|
||
Midterms |
1
|
30
|
30
|
Final Exam |
1
|
40
|
40
|
Total |
225
|
#
|
PC Sub | Program Competencies/Outcomes |
* Contribution Level
|
||||
1
|
2
|
3
|
4
|
5
|
|||
1 |
Accesses information in breadth and depth by conducting scientific research in Computer Engineering; evaluates, interprets and applies information. |
-
|
-
|
-
|
-
|
-
|
|
2 | Is well-informed about contemporary techniques and methods used in Computer Engineering and their limitations. |
-
|
-
|
-
|
-
|
-
|
|
3 |
Uses scientific methods to complete and apply information from uncertain, limited or incomplete data; can combine and use information from different disciplines. |
-
|
-
|
-
|
-
|
-
|
|
4 | Is informed about new and upcoming applications in the field and learns them whenever necessary. |
-
|
-
|
-
|
-
|
-
|
|
5 |
Defines and formulates problems related to Computer Engineering, develops methods to solve them and uses progressive methods in solutions. |
-
|
-
|
-
|
-
|
-
|
|
6 | Develops novel and/or original methods, designs complex systems or processes and develops progressive/alternative solutions in designs |
-
|
-
|
-
|
-
|
-
|
|
7 |
Designs and implements studies based on theory, experiments and modelling; analyses and resolves the complex problems that arise in this process. |
-
|
-
|
-
|
-
|
-
|
|
8 |
Can work effectively in interdisciplinary teams as well as teams of the same discipline, can lead such teams and can develop approaches for resolving complex situations; can work independently and takes responsibility. |
-
|
-
|
-
|
-
|
-
|
|
9 |
Engages in written and oral communication at least in Level B2 of the European Language Portfolio Global Scale. |
-
|
-
|
-
|
-
|
-
|
|
10 |
Communicates the process and the results of his/her studies in national and international venues systematically, clearly and in written or oral form. |
-
|
-
|
-
|
-
|
-
|
|
11 |
Is knowledgeable about the social, environmental, health, security and law implications of Computer Engineering applications, knows their project management and business applications, and is aware of their limitations in Computer Engineering applications. |
-
|
-
|
-
|
-
|
-
|
|
12 |
Highly regards scientific and ethical values in data collection, interpretation, communication and in every professional activity. |
-
|
-
|
-
|
-
|
-
|
*1 Lowest, 2 Low, 3 Average, 4 High, 5 Highest
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