DATA MINING (2/2 Credits)
Learning Outcomes:
On successful completion of this course, students will be able to: LO1 – cite concept of data, data preprocessing, data warehouse, OLAP, and data cube; LO2 – apply various data mining techniques; LO3 – apply data mining trends and research frontiers.
Topics :
- Introduction;
- Getting to know your data;
- Mining frequent patterns, associations, and correlations I;
- Mining frequent patterns, associations, and correlations II;
- Classification I;
- Classification II;
- Data mining trends and research frontiers;
- Outlier analysis;
- Introduction to R;
- Visualization Using R;
- Data description using R programming;
- Mining frequent pattern and associations using R;
- Quiz;
- Clustering I;
- Clustering II;
- Classification I;
- Classification II;
- Outlier detection;
- Introduction to RapidMiner;
- Data preprocessing I;
- Data preprocessing II;
- Data Warehousing;
- Online Analytical Processing;
- Data Cube Technology;
- Cluster analysis I;
- Cluster analysis II.
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