Laatste inzichten

AI Recommendation Systems: Show Users What They Want

Build recommendation engines that increase engagement and revenue.

AI Recommendation Systems: Show Users What They Want

35% of Amazon purchases come from recommendations. What about yours?

Recommendation Approaches

Collaborative Filtering

  • “Users like you also bought…”
  • Based on behavior patterns
  • Cold start challenge
  • Requires user data

Content-Based

  • “Similar to what you viewed…”
  • Based on item attributes
  • Works for new users
  • Limited discovery

Hybrid

  • Combines approaches
  • Best of both worlds
  • More complex
  • Industry standard

Impact

IndustryRevenue Impact
E-commerce+10-30%
Streaming+60% engagement
News+40% clicks
SaaS+25% adoption

Use Cases

ApplicationRecommendation Type
ProductsPurchase history
ContentViewing behavior
MusicListening patterns
JobsSkills matching

Tools

ToolFocus
Amazon PersonalizeAWS
RecombeeAPI-first
Dynamic YieldMarketing
Algolia RecommendSearch + recs

Quick Wins

  1. Recently viewed - Simple, effective
  2. Bestsellers - Social proof
  3. Frequently bought together - Cross-sell
  4. Personalized home - Increase engagement

Want better recommendations for your users? Let’s discuss your personalization needs.

KodKodKod AI

Online

Hallo! 👋 Ik ben de KodKodKod AI-assistent. Hoe kan ik u helpen?