Algorithmic Transparency Summary
This Transparency Summary explains how Vibble’s ranking, recommendation, personalization, and integrity models operate. It outlines what signals our systems use, which signals we explicitly do not use, how safety layers reduce harmful content, and how users can adjust, reset, or disable personalized ranking.
1. Overview
Vibble uses machine-learning models, heuristic rules, and safety filters to determine which posts, media, and accounts users see in their timelines, search results, trends, and Explore recommendations. Because Vibble operates in real-time with high-velocity posting patterns, the recommendation system is built for:
- Fast ranking and resurfacing of new content
- Integrity checks to mitigate manipulation, spam, and coordinated influence
- Safety protections against harmful or misleading content
- Personalization based on user interests and platform interactions
- Fair distribution of content across diverse voices and communities
This document provides a high-level but detailed overview. Additional detail is available in the Algorithmic Accountability Policy and technical documentation.
2. Core Ranking Systems
Vibble uses multiple ranking models depending on the surface:
- Home Timeline Ranking: Personalized ranking of posts from followed accounts, recommended users, and algorithmically surfaced content.
- Explore / Discovery Ranking: Topic, interest, and behavior-based prediction models.
- Search Ranking: Query relevance combined with integrity and safety scoring.
- Trends Ranking: Volume + velocity + geographic interest with safety filters applied.
- Replies & Quote Post Ranking: Prioritized display based on relationship, relevance, safety signals, and toxicity reduction.
3. Key Ranking Signals
Vibble may consider the following signals when generating personalized or non-personalized recommendations:
- User Interactions: Likes, reposts, replies, dwell time, profile clicks, language preferences.
- Content Quality Signals: Freshness, readability, media type, content structure, and engagement velocity.
- Account-Level Signals: Age of account, posting patterns, authenticity checks, user trust score.
- Semantic & Topic Features: NLP-based classification of post topics, sentiment, and themes.
- Safety & Integrity Signals: Toxicity detection, misinformation indicators, policy risk scoring, content sensitivity labels.
- Regional & Language Context: Local trends, cultural signals, time-zone behavior patterns.
4. Signals Vibble Does Not Use for Ranking
To protect user rights and avoid discrimination, Vibble does NOT use the following signals:
- Race, ethnicity, or national origin
- Religion or belief systems
- Gender identity or sexual orientation
- Health status or disability
- Financial status, income, or credit data
- Political ideology or party alignment
- Contacts, private messages, or off-platform behavior
Vibble does not sell user data or provide ranking advantages based on paid relationships.
5. Safety Layers & Integrity Protections
Before any recommendation is delivered, Vibble applies a multi-layer integrity pipeline that removes or suppresses content violating policy or posing systemic risks:
- Zero-Tolerance Filters: CSAM, terrorism, explicit illegal activity, major violations.
- Toxicity & Harassment Filters: Down-rank or hide abusive replies and brigading patterns.
- Misinformation Classifiers: Detect harmful political or crisis misinformation.
- Graphic & Sensitive Media Review: Hide behind sensitive media warnings.
- Spam & Automation Controls: Remove content from bots, link farms, or manipulation rings.
- Election Integrity Rules: Special protections during election cycles and civic events.
- Child Safety Controls: Filters that prevent minors from encountering harmful content.
6. User Controls for Algorithmic Personalization
Vibble gives users the ability to control how personalization affects their experience:
- Switch Between “For You” and “Following” Feeds: Direct choice of algorithmic or chronological content.
- Reset Personalization: Clears stored behavioral signals and restarts ranking from defaults.
- Disable Interest-Based Recommendations: Removes personalization features across Explore and Home.
- Mute, Block & Restrict Tools: Removes unwanted users, topics, or content types.
- Label Dismissal Feedback: Allows users to indicate inaccurate or unwanted recommendations.
- Topic Opt-Out: Opt out of topics such as politics, finance, or sensitive categories.
7. Trending, Explore & Search Transparency
Vibble publicly discloses the factors determining whether a topic or post appears in Trends or Explore:
- Conversation volume and velocity
- Geographic momentum
- Authenticity of engagement (bot filters applied)
- Safety checks (removal of harmful or sensitive trends)
- Misinformation filters for elections and crises
Vibble may remove or suppress trends that are:
- Manipulated by coordinated networks
- Harmful to minors or vulnerable groups
- Linked to illegal activity or incitement
- Based on false claims that could cause real-world harm
8. Explainability & User Education
Vibble provides users with transparency features that explain why content appears in feeds:
- “Why am I seeing this?” explanations
- Labels for sensitive or contextualized content
- Public documentation of major ranking factors
- Clarification when commercial relationships influence placement (Ads)
9. Manipulation, Bots & Abuse Prevention
Algorithmic integrity systems identify harmful or coordinated behavior:
- Bot detection using behavioral patterns, velocity signals, and device fingerprinting
- Spam filters for repeated posting, link farms, and automated replies
- Down-ranking of accounts with repeated policy violations
- Network analysis for identifying abuse rings, misinformation cells, or astroturfing
These systems feed directly into moderation and visibility controls.
10. Data Protection & Privacy
Vibble’s algorithmic systems comply with:
- GDPR (EU)
- DSA (EU)
- Online Safety Act (UK)
- CCPA (California)
- Global data-protection standards
Personalization does not rely on:
- Third-party data brokers
- Sensitive personal attributes
- Private messages or off-platform behavior
11. Appeals & Corrections
Users may appeal or challenge algorithmic decisions that significantly impact content reach:
- Appeal removal of posts or sensitive media labels
- Request explanation of ranking or visibility limitations
- Challenge suspected shadowbans or integrity restrictions
Appeals are handled by a separate, non-automated review team.
12. Oversight, Audits & Accountability
Vibble performs continuous audits to detect bias, fairness issues, and safety gaps:
- Internal algorithmic audits every quarter
- External audits where required by law (e.g., DSA VLOP obligations)
- Bias reduction training and model calibration
- Cross-functional oversight by Nexa Group governance and safety teams
13. Contact Information
For transparency, algorithmic concerns, or regulatory questions:
Transparency Office: transparency@vibble.com
Algorithmic Integrity: algorithms@vibble.com
Nexa Group Compliance: compliance@nexa-group.org
14. Updates to This Summary
Vibble may revise this document to reflect new ranking models, transparency requirements, regulatory changes, or user controls. Major updates will be published with a revised date and linked in the Transparency Center.