Giovanna Massarotto (U Pennsylvania) has posted “Algorithmic Remedies for Google’s Data Monopoly” on SSRN. Here is the abstract:
Algorithms and data are the building blocks of the digital economy. From Google’s search engine to Meta’s Instagram and OpenAI’s ChatGPT, all “Big Tech” rely on algorithms to collect and process vast amounts of data that power their services and AI models. While algorithms themselves can be efficient and impartial tools, Google’s strategic use of them, combined with exclusionary practices, has landed the company in federal court for monopolizing critical digital markets. On September 2, 2025, a judge required Google to grant rivals access to its data to address the company’s monopolization of critical digital markets that rely on data. Another judge is expected to impose remedies on Google in a separate antitrust proceeding, which could encompass data-sharing measures, including data facilities. This remedy would de facto regulate data-driven markets and influence the future of the emerging AI industry.
However, such data-sharing obligations in antitrust law create a classic resource allocation problem: who gets access, and how can courts ensure that access is fair and non-discriminatory? This article demonstrates that this legal challenge mirrors a problem computer science solved decades ago: ensuring multiple parties can use a shared resource without conflict. Thereafter, drawing on those algorithmic solutions, it proposes a framework with systems that operate like a digital ‘take-a-number’ machine or a formal voting process to manage data distribution efficiently and fairly.
This article makes three important contributions to the existing scholarship in this field. First, it explains how data-sharing remedies can be designed and implemented, whether to address specific anticompetitive conduct or as part of broader regulatory frameworks. Second, it develops a comprehensive framework with three algorithmic approaches for resource allocation, translating computer science solutions into legal mechanisms. Third, this framework is applied to Google’s ongoing monopolization cases, guiding data-sharing remedies and promoting competition in AI and other data-driven markets.
