Eskisehir Technical University Info Package Eskisehir Technical University Info Package
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About the Program Educational Objectives Key Learning Outcomes Course Structure Diagram with Credits Field Qualifications Matrix of Course& Program Qualifications Matrix of Program Outcomes&Field Qualifications
  • Course Structure Diagram with Credits
  • Data and Text Mining
  • Description
  • Description
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  • ECTS Credit Load

Course Introduction Information

Code - Course Title BİL612 - Data and Text Mining
Course Type Elective Courses
Language of Instruction Türkçe
Laboratory + Practice 3+0
ECTS 7.5
Course Instructor(s) PROFESÖR DOKTOR CİHAN KALELİ
Mode of Delivery Face-to-face instruction including theoretical lectures, practical applications, academic paper reviews, data analysis exercises, and semester project studies.
Prerequisites Basic knowledge of programming, probability and statistics, and database systems is recommended.
Courses Recomended Machine Learning, Database Management Systems, Statistical Methods, Artificial Intelligence.
Required or Recommended Resources J. Han, M. Kamber, J. Pei, Data Mining: Concepts and Techniques, 3rd Edition, Morgan Kaufmann, 2011.I. H. Witten, E. Frank, M. A. Hall, Data Mining: Practical Machine Learning Tools and Techniques, Morgan Kaufmann.C. D. Manning, P. Raghavan, H. Schütze, Introduction to Information Retrieval, Cambridge University Press.
Recommended Reading List J. Han, M. Kamber, J. Pei, Data Mining: Concepts and Techniques, 3rd Edition, Morgan Kaufmann, 2011.I. H. Witten, E. Frank, M. A. Hall, Data Mining: Practical Machine Learning Tools and Techniques, Morgan Kaufmann.C. D. Manning, P. Raghavan, H. Schütze, Introduction to Information Retrieval, Cambridge University Press.
Assessment methods and criteria Assessment is based on research-oriented assignments, academic paper presentations, semester project, practical applications, midterm examination, and final examination.
Work Placement -
Sustainability Development Goals

Content

Weeks Topics
Week - 1 Introduction to data mining, fundamental concepts of data mining, knowledge discovery processes, application areas of data mining, and current research problems.
Week - 2 Data types and datasets, attribute types, statistical properties of data, similarity and distance measures, and data visualization techniques.
Week - 3 Data preprocessing methods, missing data analysis, noisy data cleaning, data transformation, normalization, and data integration.
Week - 4 Data reduction techniques, feature selection, dimensionality reduction, PCA method, sampling techniques, and data compression approaches.
Week - 5 Association rule mining, frequent pattern analysis, support and confidence concepts, Apriori algorithm, and its applications.
Week - 6 FP-Growth algorithm, closed and maximal patterns, pattern evaluation methods, and advanced pattern mining approaches.
Week - 7 Introduction to classification, decision trees, information gain, gain ratio, Gini index, and decision tree construction methods.
Week - 8 Bayesian classifiers, Naive Bayes algorithm, K-Nearest Neighbor method, model evaluation, and performance metrics.
Week - 9 Introduction to cluster analysis, similarity measures, K-Means algorithm, K-Medoid method, and clustering performance evaluation.
Week - 10 Hierarchical clustering methods, density-based clustering, DBSCAN algorithm, and clustering in high-dimensional datasets.
Week - 11 Introduction to text mining, text preprocessing, tokenization, stop-word removal, stemming, and TF-IDF methods.
Week - 12 Text classification methods, document similarity, sentiment analysis, information retrieval systems, and natural language processing applications.
Week - 13 Big data analytics, social network analysis, web mining, recommender systems, and current research topics in data mining.
Week - 14 Semester project presentations, academic paper discussions, current research trends, and overall course evaluation.

Learning Activities and Teaching Methods

  • Competences
  • Questoning
  • Abstract analysis and synthesis
  • Problem solving
  • Information Management
  • Elementary computing skills

Assessment Methods

Assessment Method and Passing Requirements
Quamtity Percentage (%)
1.Midterm Exam 1 25
Homework 1 25
Final Exam 1 50
Toplam (%) 100
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