CMP4336 Introduction to Data MiningBahçeşehir UniversityDegree Programs LOGISTICS (TURKISH)General Information For StudentsDiploma SupplementErasmus Policy StatementNational QualificationsBologna Commission
LOGISTICS (TURKISH)
Associate TR-NQF-HE: Level 5 QF-EHEA: Short Cycle EQF-LLL: Level 5

Course Introduction and Application Information

Course Code Course Name Semester Theoretical Practical Credit ECTS
CMP4336 Introduction to Data Mining Spring
3 0 3 6
This catalog is for information purposes. Course status is determined by the relevant department at the beginning of semester.

Basic information

Language of instruction: English
Type of course: Non-Departmental Elective
Course Level: Associate (Short Cycle)
Mode of Delivery: Face to face
Course Coordinator : Dr. Öğr. Üyesi CEMAL OKAN ŞAKAR
Recommended Optional Program Components: None
Course Objectives: In this course, data mining algorithms and computational paradigms that are used to extract useful knowledge, extract patterns and regularities in databases, and perform prediction and forecasting will be discussed. Supervised and unsupervised learning approaches will be covered with a focus on pattern discovery and cluster analysis.

Learning Outcomes

The students who have succeeded in this course;
1. Be able to understand Data Gathering and Pre-processing
2. Become familiar with Frequent Item Set Detection
3. Be able to understand Association Rule Mining
4. Be able to understand Classifiers, and their benefits
5. Be able to use Clustering
6. Be able to understand Clustering Evaluation

Course Content

1.Introduction to Basic Concepts
2.Data Exploration
3.Classification
4.Clustering
5.Dimensionality Reduction
6.Frequent Item Set Mining
7.Association Rule Mining

Weekly Detailed Course Contents

Week Subject Related Preparation
1) Introduction to Basic Concepts None
2) Data Exploration: Summary Statistics, Visualization, OLAP and Multi-dimensional Data Analysis None
3) Data Pre-Processing, Transformation, Normalization, Standardization None
4) Classification and Regression: Model Selection and Generalization, Decision Trees, Performance Evaluation None
5) Classification: Bayesian Decision Theory, Parametric Classification, Naive Bayes Classifier, Instance-Based Classifiers
6) Classification None
6) Classification and Regression: Artificial Neural Networks, Support Vector Machines
7) Midterm I Review of all topics covered so far
8) Clustering: Partitioning and Hierarchical Algorithms None
9) Clustering: Density-Based Algorithms
10) Cluster Evaluation, Comparing Clusterings None
11) Midterm II none
12) Dimensionality Reduction none
13) Frequent Item Set Mining none
14) Association Rule Mining none

Sources

Course Notes / Textbooks: Introduction to Data Mining by Pang-Ning Tan, Michael Steinbach and Vipin Kumar
References: Data Mining: Concepts and Techniques, by Jiawei Han, Micheline Kamber and Jian Pei

Evaluation System

Semester Requirements Number of Activities Level of Contribution
Homework Assignments 2 % 20
Project 1 % 20
Midterms 2 % 20
Final 1 % 40
Total % 100
PERCENTAGE OF SEMESTER WORK % 40
PERCENTAGE OF FINAL WORK % 60
Total % 100

ECTS / Workload Table

Activities Number of Activities Workload
Course Hours 14 42
Study Hours Out of Class 16 32
Project 5 15
Homework Assignments 6 12
Midterms 8 28
Final 6 26
Total Workload 155

Contribution of Learning Outcomes to Programme Outcomes

No Effect 1 Lowest 2 Low 3 Average 4 High 5 Highest
           
Program Outcomes Level of Contribution
1) To have knowledge about logistics operations and the basic legislation
2) To have knowledge about the politics, corporations and the developments in logistics.
3) To have knowledge about the economical life and the basic features of the enterprises that take place in logistics sector.
4) To have knowledge about the documents that are used in logistics and how to prepare them.
5) To have knowledge about the new marketing and sales techniques and the principles of opening to new markets.
6) To have knowledge and consciousness about the job security, worker health and environment protection in logistics sector.
7) To have knowledge and consciousness about the basic legal attainments, social responsibility, ethics and social security rights in logistics.
8) To be involved in communication network in logistics sector and follow the developments. 2
9) To have the ability to comment and evaluate the classical and current theories by taking into account the developments in logistics and supply chain areas.
10) To have the basic knowledge about foreign trade and customs legislation.
11) To have knowledge about relationship between foreign trade and logistics management.
12) To have basic knowledge in at least one foreign language.
13) He/she can use information and communication tecnologies that necessary for their area, follows technological change and applies new technologies to business system.