Approaches to Fraud Detection - Autoencoder and Isolation Forest - Fraud Detection Using ML

Approaches to Fraud Detection - Autoencoder and Isolation Forest - Fraud Detection Using ML

Data Science Dojo via YouTube Direct link

Finding Outliers: Statistics

15 of 21

15 of 21

Finding Outliers: Statistics

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Approaches to Fraud Detection - Autoencoder and Isolation Forest - Fraud Detection Using ML

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Introduction
  2. 2 KNIME Analytics Platform
  3. 3 KNIME nodes & workflow
  4. 4 Goals for the Session
  5. 5 Fraud is all around us
  6. 6 Potentially fraudulent data
  7. 7 Fraudulent data might be labelled
  8. 8 Decision Tree
  9. 9 Random Forest
  10. 10 Advanced: Sampling Strategies
  11. 11 Finding fraud through deep learning
  12. 12 A neural autoencoder in KNIME
  13. 13 Walk through how to do the same task using unlabeled data Jinwei
  14. 14 Fraud and Outlier Detection
  15. 15 Finding Outliers: Statistics
  16. 16 Demo IQR and Z-score Implementation in KNIME
  17. 17 DBSCAN
  18. 18 Summary
  19. 19 Useful Fraud-related links
  20. 20 Useful KNIME-related links
  21. 21 Q&A

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.