A1.1
- Exploratory Data AnalysisA1.2
- Case Study on 20 newsgroupA1.3
- Data Science PipelineA2.1
- Feature Selection (Filter Techniques)A2.2
- Case Study on Excess alcohol consumption among studentsA2.3
- Feature ScalingA2.4
- Feature Scaling on k Nearest NeighborA4.1
- Data sampling techniques & strategiesA4.2
- Model selection and evaluation (Grid Search & Cross-validation)A4.3
- Model comparison (using Learning curves)A4.4
- Statistical comparison of classifiers using Dietterich's 5x2cv paired t-test
A5.1
- Linear Learning MachinesA5.2
- Dual Representation in LLMA5.3
- Learning decision function using LLMA5.4
- Support Vector Machines (SVM)A6.1
- Semi-Supervised LearningA6.2
- Propogating 1-NNA6.3
- Self-TrainingA6.4
- Generative ModelsA7.1
- S3VMA7.2
- Branch & Bound algorithmA7.3
- Graph-based SSLA7.4
- Multiview Algorithms