Close
  • Ishonch
    telefon raqami

  • Dars
    jadvali

  • Imtihon video
    kuzatuvi

  • Rektor virtual
    qabulxonasi

  • Zaxira
    nomzod

  • Yashil
    Universitet


Databases and Data Mining

Databases and Data Mining

Course Information

Course Database and data mining I Code MBDM 1-3 14
Directions 70230801 – Computer Linguistics (Master) Semester 1, 2
Type of subject Elective Taught Language English
Lectures 40 Practical Lessons 80
Subject Teacher dr. Jamolbek Mattiev Independent Work 180
Total Hours 300 Credits 10

Lectures – Semester I

Code Topic Material
M1 Introductory lecture: Basic concepts and definitions Download
M2 Application fields of data mining Download
M3 The importance of data generation and big data Download
M4 Input concepts Download
M5 Understanding and visualizing the data in different formats Download
M6 Introduction to statistics Download
M7 Data preparation (discretization, normalization, balancing, …) Download
M8 Classification (Supervised machine learning techniques) Part I: Majority classifier (ZeroR) and one rule classifier (OneR) Download
M9 Classification (Supervised machine learning techniques) Part I: Naïve Bayes Download

Practical Lessons – Semester I

Code Topic Material
A1 Installing the WEKA software Download
A2 Exploring the WEKA workbench Download
A3 The CRISP-DM standard Download
A4 Downloading the dataset from UCI Machine Learning repository Download
A5 The Generation of sample datasets Download
A6 Manual classification data generation Download
A7 Analysing the big data Download
A8 Analyzing the input concepts by sample dataset on WEKA Download
A9 Development of sample classification data and applying to WEKA Download
A10 Using WEKA to load and visualize sample data sets – understanding the ARFF format Download
A11 Applying some statistical methods on WEKA Download
A12 EDA and transforming the data by using WEKA Download
A13 Developing simple classification model by using sample data Download
A14 Applying simple classification (ZeroR and OneR) algorithms to sample datasets Download
A15 Applying simple classification (Naive Bayes) algorithms to sample datasets Download
A16 Applying cross-validation method in WEKA Download