How can I utilize interest data for personalized recommendations?

Using interest data within the Brand Control Center allows brands to deliver highly relevant, AI-driven recommendations across their Community Media Network. This directly improves:

  • User engagement: Users see content that matches their preferences
  • Content discoverability: Relevant videos and communities surface faster
  • Retention & session time: Personalized feeds keep users coming back
  • Conversion & monetization: Targeted recommendations improve clicks and actions
  • Scalable personalization: AI continuously adapts recommendations as user behavior evolves

Guide: Step-by-step usage

Capture and enable interest data

Before using recommendations, ensure interest signals are available:

  1. Enable User Profile & Interests in application
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Navigate to Manage > Category in Brand Control Center.

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2. Capture interest signals via:

  • Onboarding selections (explicit interests)
  • User interactions (views, likes, shares, watch time)

The more interaction data available, the better the recommendation accuracy.

Allow AI to build interest profiles

Once enabled:

  • Brand Control Center automatically creates dynamic user interest profiles
  • Interests are continuously updated based on:
    • Content consumption patterns
    • Community participation
    • Engagement signals

This is powered by Genuin Adaptive Intelligence to ensure relevance at scale.

Apply interest data to recommendation surfaces

You can utilize interest data across multiple touchpoints:

1. Personalized Feeds

  • Rank and display videos based on user interests
  • Prioritize high-affinity content categories

2. Community & Group Recommendations

  • Suggest relevant communities based on user preferences
  • Increase join rates with contextual discovery

3. Content Suggestions

  • Recommend similar or related content after user interactions
  • Drive deeper engagement within sessions

4. Notifications & Re-engagement

  • Send personalized alerts based on user interests
  • Promote trending or new content in preferred categories

Configure placements and experiences

Using Brand Control Center (especially within Grow and Onsite modules):

  • Configure where recommendations appear:
    • Homepage feeds
    • Embedded widgets (Carousel, Feed, Standard Wall)
    • In-app experiences
  • Apply filters:
    • Interest category
    • Community relevance
    • Content type

Optimize using analytics

  1. Go to Analytics Dashboard in Brand Control Center
  2. Track:
    • CTR (Click-through rate) on recommended content
    • Engagement by interest category
    • Retention and session duration

Use these insights to:

  • Refine interest mapping
  • Improve content tagging
  • Adjust recommendation strategies
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Specs & Limitations

System Behavior

  • Recommendations are dynamically generated using AI models
  • Interest profiles evolve in real-time based on behavior
  • Works across feeds, communities, and notifications

Validation Rules

  • Requires sufficient user interaction data
  • Content must be properly tagged/classified
  • Interest signals must be enabled in Brand Control Center

Limitations

  • Cold-start users may receive generic recommendations initially
  • Misclassified content can reduce recommendation accuracy
  • Over-personalization may limit content diversity if not balanced

Example Scenario (Use Case)

A media brand wants to improve engagement across its video platform.

  • Users interact with content across categories like tech, gaming, and finance
  • Brand Control Center builds interest profiles automatically
  • The platform starts:
    • Recommending similar videos
    • Suggesting relevant communities
    • Sending targeted notifications

Result:

  • Higher CTR on recommended content
  • Increased watch time
  • Improved user retention

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