COURSE UNIT TITLE

: BIG DATA PROCESSING AND STATISTICAL MODELS

Description of Individual Course Units

Course Unit Code Course Unit Title Type Of Course D U L ECTS
ECO 2018 BIG DATA PROCESSING AND STATISTICAL MODELS COMPULSORY 3 0 0 4

Offered By

Economics (English)

Level of Course Unit

First Cycle Programmes (Bachelor's Degree)

Course Coordinator

ASSISTANT PROFESSOR ÖMÜR SALTIK

Offered to

Economics (English)

Course Objective


To introduce students to the principles and tools of big data processing and to develop their ability to apply statistical modeling techniques to analyze and interpret large and complex datasets in real-world scenarios.

Learning Outcomes of the Course Unit

1   1. Understand the fundamental concepts of big data and data processing architectures (e.g., Hadoop, Spark).
2   2. Apply statistical models such as regression, classification, and clustering to large datasets.
3   3. Use programming tools (e.g., Python, R) for data preprocessing, transformation, and analysis.
4   4. Interpret the results of statistical models and communicate insights effectively.

Mode of Delivery

Face -to- Face

Prerequisites and Co-requisites

None

Recomended Optional Programme Components

None

Course Contents

Week Subject Description
1 Introduction to Big Data and Analytics
2 Types and Sources of Big Data
3 Data Storage Systems and File Formats
4 Apache Spark and Distributed Computing
5 Data Cleaning and Preprocessing
6 Exploratory Data Analysis (EDA)
7 Statistical Modeling: Linear and Logistic Regression
8 Classification Methods and Performance Metrics
9 Clustering Algorithms (K-Means, Hierarchical)
10 Dimensionality Reduction and Feature Selection
11 Model Evaluation and Cross Validation
12 Case Study: Predictive Analytics in Big Data
13 Final Project Presentations and Review

Recomended or Required Reading

TBA

Planned Learning Activities and Teaching Methods

1. Lecture
2. In-class studies
3. Group Project

Assessment Methods

SORTING NUMBER SHORT CODE LONG CODE FORMULA
1 MT Midterm
2 QZ Quiz
3 PRS Presentation
4 FN Final
5 BNS BNS MT * 0.25 + QZ * 0.10 + PRS * 0.35 + FN * 0.30
6 BUT Bütünleme Notu
7 BBN Bütünleme Sonu Başarı Notu MT * 0.25 + QZ * 0.10 + PRS * 0.35 + BUT * 0.30


Further Notes About Assessment Methods

None

Assessment Criteria

Attendance & Participation: Active involvement in discussions.
Assignments: Hands-on exercises with real or simulated big data sets.
Midterm Exam: Covers theoretical foundations and analytical techniques.
Final Project: Students will work on a real-world big data problem, implement a model, and present results.
Quizzes: Short in-class assessments on technical and conceptual topics.

Language of Instruction

English

Course Policies and Rules

1. Attending at least 70% of lectures is mandatory.
2. Plagiarism of any type will result in disciplinary action.

Contact Details for the Lecturer(s)

To be announced.

Office Hours

To be announced.

Work Placement(s)

None

Workload Calculation

Activities Number Time (hours) Total Work Load (hours)
Lectures 14 2 28
Tutorials 14 1 14
Preparations before/after weekly lectures 12 2 24
Preparation for final exam 1 14 14
Preparation for midterm exam 1 10 10
Midterm 1 2 2
Final 1 2 2
TOTAL WORKLOAD (hours) 94

Contribution of Learning Outcomes to Programme Outcomes

PO/LOPO.1PO.2PO.3PO.4PO.5PO.6PO.7PO.8PO.9PO.10PO.11PO.12PO.13PO.14
LO.134
LO.234
LO.344
LO.444