Difference between revisions of "Feature Exploration/Learning"
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Revision as of 08:50, 16 February 2019
YouTube search... ...Google search
- Datasets
- Batch Norm(alization) & Standardization
- Data Preprocessing
- Hyperparameters
- Data Augmentation
- Visualization
- Master Data Management (MDM) / Feature Store / Data Lineage / Data Catalog
- Data Cleaning Challenge: .json, .txt and .xls | Rachael Tatman
- The Passenger Screening Kaggle challenge 1st place solution was won in part due to data preparation/generation.
- Notes on Feature Preprocessing: The What, the Why, and the How | Matthew Mayo - KDnuggets
Sparse Coding - Feature extraction