تعريف بالمساق

اسم المدرس : إياد حسني محمد الشامي

الكلية : كلية تكنولوجيا المعلومات

القسم : الحوسبة المتنقلة وتطبيقات الأجهزة الذكية

اسم المساق : تنقيب البيانات Data Mining

رقم المساق : SDEV 3304

وصف المساق :

Faculty of Information Technology – Islamic University Gaza

 

Data Mining

 SDEV 3304

Course Syllabus

 

General Information

  • Semester: 2nd Semester 2020.
  • Department: Department of Software Engineering.
  • Instructor: Dr. Iyad Husni Alshami,
    • phone: 00970 8 2860700 Ext:2960
    • email: eshami@iugaza.edu.ps
    • office hours: Saturday – Wednesday 11:00 – 13:00
    • office location: I305
  • Credits: 3Hrs.
  • Meeting time and locations:
  • 201: ST 8:00 – 9:30, I101
  • 101: ST 9:30 – 11:00, I116

 

Course’s Description

This course has been designed to give students an introduction to data mining and hands on experience with all phases of the data mining process using real data and modern tools. It covers many topics such as data formats, and cleaning; make prediction using supervised and unsupervised learning using Python and other tools, and sound evaluation methods; and data/knowledge visualization.

 

 

Course’s Objectives

This course is designed to achieve a number of goals for each student such as:

  • Providing the fundamental understanding of data mining in order to extract hidden knowledge.
  • Exploring the different data mining tasks to extract knowledge:
    • Classification,
    • Clustering,
    • Association Rules extraction, and
    • Outlier detection.
  • Practicing the data mining project phases
  • Presenting the data in the early stage of data mining projects as well as the extracted knowledge.
  • Provide the students the latest hot topics in data mining field.
  • Strengthen the team work

 

Course’s Outcome

By the end of this course the students should be able to:

  • Identify the meaning of data mining, describe the suitable data for data mining projects, list/identify at least five different data mining tasks and evaluate the extracted knowledge for each task.
  • Collect and prepare data set suitably for data mining projects.
  • Use machine learning techniques to perform the different data mining tasks.
  • Analysis and build data mining projects individually or as a team member/leader as well .
  • Adopt the ethics of profession with the sensitive personal data

 

Text book  & References

  • Text Book: “Data Mining: Concepts and Techniques”, 4th edition by Jiawei Han and Micheline Kamber, Morgan Kaufmann ©2017.

 

  • Additional Books:
    • Data Mining – Practical Machine Learning Tools and Techniques”, 4th  edition by Ian H. Witten and Eibe Frank, Elsevier © 2016
    •  

 

Course’s Outline “topics that will be covered”

 

Week #

Topic

Notes

1

Introduction to Data Mining

 

2

3

Data Understanding and Data Preparation

 

 

Knowledge Extraction Using Machine Learning Techniques

4

5

6

Supervised Learning - Classification

 

7

Supervised Learning - Regression

 

8

9

Unsupervised Learning - Clustering

 

10

11

Unsupervised Learning - Association Rules

 

12

Unsupervised Learning - Outlier Detection

 

 

 

13

Data Visualization and Knowledge Representation

 

14

Data Science’s Hot Topics

 

15

Project Presentation and Discussion

 

 

 

Teaching methods

  • Lectures,
  • Discussion groups,
  • Team work,
  • Using Videos and Presentations

 

Evaluation criteria “Grades”

  • 10% Quizzes & Assignments,
  • 10% Participating in Course’s Activities
  • 20% Midterm Exam
  • 20% Final Project
  • 40% Final Exam.

 

Course’s Tools

  • PyCharm – Python 3.6
  • Rapidminer Studio

 

Course’s Rules

  • The course contents and grading can be changed as necessary.
  • Missing more than 25% of lectures will provide you “W”.
  • There is no predetermined schedule for quizzes.
  • No excuses for missing the quizzes or the assignments.

 

مركز التميز والتعليم الإلكتروني | الجامعة الإسلامية بغزة

هاتف: 2644400 8 970+ داخلي 1571| فاكس:264 4800 8 970+

البريد الإلكتروني: elearning@iugaza.edu.ps

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