- 1.1 Data semantics
- 1.2 Assessing data quality
- 1.3 Distribution of the variables and statistics
- 1.4 Variables transformations and generation
- 1.5 Preliminary observations
- 1.6 Exploring the new features for a statistical analysis
- 2.1 K-means
- 2.2 Density based clustering
- 2.3 Hierarchical clustering
- 2.4 K-Medoids (optional task)
- 2.5 Final evaluation of the best clustering approach and comparison of the clustering obtained
- 3.1 Data preparation
- 3.2 Performing prediction using various different classification algorithms
- 3.3 Model comparisons
- 4.1 Data preparation
- 4.2 Mining sequential patterns
- 4.3 Results discussion and mining sequential patterns through categorizing products
- 4.4 Sequential pattern mining with temporal constraints