Digital Anthropology Research Center

Academic studies and applied research on decentralized social networks, with special attention to the BlueSky phenomenon and digital migration.

Read Complete Study

Research Lines

Our research projects are designed to better understand emerging social dynamics in the decentralized digital ecosystem.

📈
Ongoing

Growth and Digital Migration

Quantitative and qualitative analysis of migration patterns between social platforms, with special focus on the Twitter → BlueSky transition.

🔢Growth and adoption metrics
👥Migrant user profiles
⏱️Timeline: 2024-2025
🔬
Published

Open Science Methodology

Development of transparent methodological standards for social network research, following FAIR principles and Open Science.

📐Reproducible research protocols
🌐Open and accessible data
Academic peer validation
🌐
Planned

Social Decentralization

Social and cultural impact of decentralized networks. How power dynamics and participation change in the post-Twitter era.

⚖️Distributed power dynamics
🏛️Decentralized governance
📅Expected start: 2025
💬
Development

Discourse Analysis

Evolution of political, social, and cultural discourse in the transition between centralized and decentralized digital ecosystems.

🗣️Semantic content analysis
🏷️Automatic thematic classification
📊Trend visualization

Thematic Areas

Our research encompasses various disciplines and methodological approaches.

🏛️

Digital Anthropology

Ethnographic study of human behavior in decentralized digital spaces.

🌐

Social Networks

Analysis of connection and communication structures in emerging platforms.

💬

Online Communication

Evolution of communicative patterns and digital languages.

🔄

Digital Migration

User transition processes between technological ecosystems.

DecentralizationSocial BehaviorOpen ScienceFAIR DataMixed MethodsDigital Ethics

Collaborate with Us

We are open to academic collaborations, joint projects, and funding opportunities to advance knowledge about decentralized social networks.

Contact ResearchersView Methodology