Making Recommendations Explainable

Making Recommendations Explainable

Conf42 via YouTube Direct link

Building the Explainability Index: Relevancy via Labels & Models

10 of 15

10 of 15

Building the Explainability Index: Relevancy via Labels & Models

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Making Recommendations Explainable

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

  1. 1 Welcome & What You’ll Learn: Making Recommendations Explainable
  2. 2 What “Explainable Recommendations” Mean User View
  3. 3 Why Change the System: User Reports & Developer Traceability
  4. 4 The Classic Recommender Pipeline Overview
  5. 5 Embeddings 101: Content/Collaborative Filtering Basics
  6. 6 User Profile Stage: Why Single Embeddings Are Hard to Explain
  7. 7 Candidate Selection with KNN/HNSW: Speed vs. Quality Issues
  8. 8 Ranking + Business Logic: Scoring and Diversifying the Feed
  9. 9 New Explainable Approach: Store Positive Publication IDs
  10. 10 Building the Explainability Index: Relevancy via Labels & Models
  11. 11 Ordering Candidates: Attractiveness CTR → Predictive Model
  12. 12 Generating the Explanation Text Users See
  13. 13 Keeping Positives Manageable: Diversity + Ranking Positives
  14. 14 Smarter Candidate Quotas with Bandit-Style Allocation
  15. 15 Wrap-Up: Transparency, Better Relevance, Better Debugging

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.