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

Summary

18 of 21

18 of 21

Summary

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.