ArXiv TLDR

Probably Approximately Consensus: On the Learning Theory of Finding Common Ground

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2604.21811

Carter Blair, Ben Armstrong, Shiri Alouf-Heffetz, Nimrod Talmon, Davide Grossi

cs.LGcs.AIcs.MA

TLDR

This paper introduces a PAC-learning framework to identify consensus intervals in online deliberation, efficiently reducing user queries.

Key contributions

  • Models consensus as an interval in a 1D opinion space, accounting for topic salience.
  • Introduces an efficient ERM algorithm with PAC-learning guarantees for consensus identification.
  • Shows selective user querying significantly reduces the number of queries required for consensus.

Why it matters

This paper provides a theoretically sound and efficient method for identifying nuanced consensus in online deliberation. By modeling consensus as an interval and reducing query needs, it improves how platforms find common ground.

Original Abstract

A primary goal of online deliberation platforms is to identify ideas that are broadly agreeable to a community of users through their expressed preferences. Yet, consensus elicitation should ideally extend beyond the specific statements provided by users and should incorporate the relative salience of particular topics. We address this issue by modelling consensus as an interval in a one-dimensional opinion space derived from potentially high-dimensional data via embedding and dimensionality reduction. We define an objective that maximizes expected agreement within a hypothesis interval where the expectation is over an underlying distribution of issues, implicitly taking into account their salience. We propose an efficient Empirical Risk Minimization (ERM) algorithm and establish PAC-learning guarantees. Our initial experiments demonstrate the performance of our algorithm and examine more efficient approaches to identifying optimal consensus regions. We find that through selectively querying users on an existing sample of statements, we can reduce the number of queries needed to a practical number.

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