'Generative CI' through Collective Response Systems
Aviv Ovadya

TL;DR
This paper introduces collective response systems as scalable, generative collective intelligence tools that facilitate consensus, dialogue, and decision-making among diverse groups, with applications in governance, conflict resolution, and AI governance.
Contribution
It defines the structure, processes, and principles of collective response systems, highlighting their potential to transform decision-making and democratic processes.
Findings
Polis has supported policy-making worldwide.
Remesh has been used by the UN in conflict zones.
Collective response systems enable non-confrontational exploration of divisive issues.
Abstract
How can many people (who may disagree) come together to answer a question or make a decision? "Collective response systems" are a type of generative collective intelligence (CI) facilitation process meant to address this challenge. They enable a form of "generative voting", where both the votes, and the choices of what to vote on, are provided by the group. Such systems overcome the traditional limitations of polling, town halls, standard voting, referendums, etc. The generative CI outputs of collective response systems can also be chained together into iterative "collective dialogues", analogously to some kinds of generative AI. Technical advances across domains including recommender systems, language models, and human-computer interaction have led to the development of innovative and scalable collective response systems. For example, Polis has been used around the world to support…
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Taxonomy
TopicsEthics and Social Impacts of AI · AI in Service Interactions
