ArXiv TLDR

Multistakeholder Impacts of Profile Portability in a Recommender Ecosystem

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2604.21750

Anas Buhayh, Elizabeth McKinnie, Clement Canel, Robin Burke

cs.IR

TLDR

This paper explores how profile portability, where users choose their recommender algorithms, affects user data, utility, and stakeholders in the ecosystem.

Key contributions

  • Examines "algorithmic pluralism" where users select their preferred recommendation algorithm.
  • Investigates the impact of data portability on user models when users switch algorithms.
  • Reveals varying user utility across different algorithms under data portability scenarios.
  • Highlights key policy considerations for designing equitable recommendation ecosystems.

Why it matters

This paper shifts focus from algorithmic tweaks to structural changes in recommender systems, specifically user-chosen algorithms and data portability. It's vital for understanding how emerging data regulations impact user utility and for designing more equitable and user-centric recommendation ecosystems.

Original Abstract

Optimizing outcomes for multiple stakeholders in recommender systems has historically focused on algorithmic interventions, such as developing multi-objective models or re-ranking results from existing algorithms. However, structural changes to the recommendation ecosystem itself remain understudied. This paper explores the implications of algorithmic pluralism (also known as "middleware" in the governance literature), in which recommendation algorithms are decoupled from platforms, enabling users to select their preferred algorithm. Prior simulation work demonstrates that algorithmic choice benefits niche consumers and providers. Yet this approach raises critical questions about user modeling in the context of data portability: when users switch algorithms, what happens to their data? Noting that multiple data portability regulations have emerged to strengthen user data ownership and control. We examine how such policies affect user models and stakeholders' outcomes in recommendation setting. Our findings reveal that data portability scenarios produce varying effects on user utility across different recommendation algorithms. We highlight key policy considerations and implications for designing equitable recommendation ecosystems.

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