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Who controls data and why that equals power

The Power of Data: Unveiling Its Controllers

Data is far from neutral or merely raw; it functions as a strategic resource. The party that gathers, stores, interprets, and oversees extensive, high‑quality datasets secures economic leverage, political sway, and operational authority. That concentrated ability to anticipate behavior, influence markets, guide information flows, and execute large‑scale decisions is what ultimately transforms data into power.

Primary stakeholders responsible for managing data

  • Big technology platforms: Companies spanning global search, social networks, cloud ecosystems, and ecommerce services accumulate vast volumes of behavioral, transactional, and location-based information derived from billions of users and activities.
  • Governments and regulators: States gather identity, taxation, health, telecom, and surveillance records, while also defining the policies that govern how data may be accessed and utilized.
  • Data brokers and aggregators: Businesses that acquire, enhance, and market consumer profiles, frequently merging public documents, purchasing histories, and inferred attributes for marketing or analytics.
  • Enterprises with vertical stacks: Healthcare networks, financial institutions, retail groups, and telecommunications firms maintain specialized and sensitive datasets tied to measurable real‑world outcomes.
  • Research institutions and public bodies: Universities and national statistical offices generate and curate scientific, demographic, and environmental data aimed at serving the public good.
  • Individuals and communities: People produce data through daily activities, consumption, and interactions; coordinated action and regulatory protections can gradually restore meaningful control to them.

Types of data that confer influence

  • Personal identifier data: Names, official identification numbers, and physical addresses, all relied upon for verification processes, oversight, and regulatory compliance.
  • Behavioral and interactional data: Search terms, user clicks, viewing activity, and social network connections, which serve as core inputs for customization and influence-based systems.
  • Transactional and financial data: Purchase records, payment details, and credit histories, forming the basis for economic analysis and adaptive pricing models.
  • Sensor and IoT data: Location patterns, device diagnostics, and smart home activity logs, allowing persistent observation and delivery of context-responsive functions.
  • Biometric and genomic data: Fingerprints, facial features, and DNA information, considered highly sensitive and applied in identity verification, medical research, and forensic activities.

How data control translates into power: mechanisms and effects

  • Economic moat and market power: Extensive data resources strengthen machine learning models and, in turn, enhance products, attracting larger audiences and generating even more data. This self‑reinforcing loop creates formidable entry barriers. For instance, search services and ad targeting have concentrated advertising markets because richer data sets deliver greater relevance and higher revenue.
  • Predictive advantage: When organizations can forecast behavior with precision, they make choices that shape outcomes to their benefit, including targeted advertising, credit assessments, fraud prevention, and inventory planning.
  • Behavioral influence and information control: Recommendation systems allow platforms to decide which content is promoted or hidden. The Cambridge Analytica case—where Facebook data was harvested to deliver political messaging—illustrates how behavioral insights can be turned into persuasive tools.
  • Gatekeeping and platform governance: Dominant platform owners can dictate conditions for third parties, shaping access and competitive dynamics. For example, marketplace operators that merge seller data with their own product lines gain intelligence that can undercut independent vendors.
  • Surveillance and social control: Concentrated oversight of communications, mobility, and transaction records enables large‑scale monitoring. Government initiatives and private analytics can be combined to support predictive policing, eligibility evaluations, or systems resembling social scoring.
  • National security and geopolitical leverage: States possessing advanced digital systems and strategic data sets—such as telecom networks, critical infrastructure telemetry, or citizen registries—acquire operational intelligence and negotiation strength in both diplomacy and conflict.

Representative cases and data points

  • Cambridge Analytica (2016–2018): Harvested Facebook user data to build psychological profiles for highly targeted political advertising, highlighting risks of third‑party access and opaque reuse.
  • Platform ad ecosystems: Google and Meta have historically captured major shares of digital advertising by combining search, social, and targeting data to sell precise audiences to advertisers.
  • Amazon marketplace dynamics: Amazon uses sales and search data across the platform to optimize its logistics, recommend products, and develop private‑label items — creating conflicts between marketplace operator and sellers.
  • Health data partnerships: Consumer genetics companies and health apps have partnered with pharmaceutical firms to accelerate drug discovery, illustrating how aggregated health data can be monetized with both public benefit and commercial profit.
  • Regulatory responses: The EU General Data Protection Regulation (implemented 2018) redefined data controller and processor responsibilities and introduced rights like data portability and the right to erasure; Apple’s App Tracking Transparency (2021) changed mobile ad tracking economics by restricting cross‑app IDFA access.

Implications for markets, democratic processes, and overall fairness

  • Market concentration: Data-driven strengths often give established players a dominant position, weakening competitive dynamics and potentially hindering progress in certain industries.
  • Privacy erosion and reidentification risk: Supposedly anonymized data can frequently be traced back to individuals when cross-referenced with additional sources, putting sensitive details at risk.
  • Discrimination and bias: Systems built on skewed datasets may perpetuate and even intensify inequitable patterns in areas such as credit evaluation, recruitment, law enforcement, and medical services.
  • Information manipulation: Targeted communication derived from granular data can deepen social divides, steer public attention, and reshape collective narratives.
  • Asymmetric bargaining power: People and smaller entities frequently lack the influence needed to secure equitable data-use terms, while data brokers profit from profiles created through obscure and complex data trails.

Policy, technology, and governance levers to rebalance power

  • Regulation and antitrust: Binding requirements on data portability, interoperability, and duties for dominant platforms can curb gatekeeper influence, with enforcement actions such as privacy penalties and continuous antitrust investigations targeting major platforms.
  • Data minimization and purpose limitation: Collecting only what is essential and demanding explicit, well‑defined purposes helps reduce surveillance exposure and limits unauthorized secondary uses.
  • Data portability and open standards: Enabling users to transfer their information across services and adopting uniform APIs lowers switching barriers while stimulating broader market competition.
  • Privacy‑preserving technologies: Approaches including federated learning, differential privacy, and secure multi‑party computation make it possible to train models and run analyses without aggregating raw personal information in a single location.
  • Data trusts and stewardship models: Independent stewards can oversee sensitive data under fiduciary duties, providing responsible access for research and activities serving the public interest.
  • Transparency and auditability: Requiring model interpretability, traceable provenance, and external audits supports the identification of improper use and potential bias.

Practical steps for organizations and individuals

  • For organizations: Build clear data governance frameworks, map data flows, apply privacy‑by‑design, use synthetic data or privacy techniques when possible, and publish transparency reports about data use and model impacts.
  • For individuals: Use privacy controls, limit permissions, exercise data rights where available (access, deletion, portability), and prefer services that practice minimal collection and transparency.

Data control is not just a technical or commercial issue; it shapes who can influence markets, elections, scientific priorities, and everyday life. Power accrues where data flows are monopolized, where inference capabilities are concentrated, and where governance is opaque. Rebalancing that power requires coordinated legal frameworks, technical safeguards, institutional design, and cultural norms that recognize data as both an economic resource and a collective social trust.

By Albert T. Gudmonson

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