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arxiv: 2605.16291 · v1 · pith:APDC7MRYnew · submitted 2026-04-14 · 💻 cs.CY · cs.AI· cs.GT

AI of the People, by the People, for the People: A Social Choice Approach to Collective Control of Artificial Intelligence

Pith reviewed 2026-05-21 01:36 UTC · model grok-4.3

classification 💻 cs.CY cs.AIcs.GT
keywords social choice theorycollective controlAI governancemachine learning pipelinepreference aggregationAI alignmentdemocratic control
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The pith

Social choice theory can guide collective societal control over AI systems across the entire development process.

A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.

The paper introduces collective control of artificial intelligence as a way to involve groups of people in shaping AI through social choice methods. It claims this input should happen at multiple stages including selecting training data, defining objectives, and ensuring alignment with human values. This approach matters because it moves beyond high-level policy to practical mechanisms that use mathematical criteria for fairness in decision-making. Readers interested in democratic technology would see value in treating AI design as a series of collective choice problems solvable with established voting and aggregation tools.

Core claim

We propose a new approach grounded in social choice theory, which we term collective control of artificial intelligence. We argue that collective input can and should be incorporated at multiple points across the ML development pipeline, from data collection through objective design to alignment. We further demonstrate that social choice provides a well-suited modelling language for the treatment of collective input across all stages and that its axiomatic methodology yields principled criteria for evaluating various control mechanisms. Overall, our conceptual contribution provides a mathematically grounded framework to implement and analyse collective control of AI systems.

What carries the argument

collective control of artificial intelligence, which applies social choice theory to aggregate public input for decisions at each stage of the machine learning pipeline

If this is right

  • Control mechanisms for data collection can be evaluated for properties like representativeness using social choice axioms.
  • Objective design processes can incorporate diverse societal preferences through preference aggregation methods.
  • Alignment techniques become subject to formal criteria for collective approval rather than solely expert judgment.
  • The framework allows analysis of trade-offs between different points of intervention in AI development.

Where Pith is reading between the lines

These are editorial extensions of the paper, not claims the author makes directly.

  • Designers could prototype voting-based systems for choosing AI training datasets in public experiments.
  • This view links AI ethics to classic problems of fair division and resource allocation studied in economics.
  • Future work might test whether axiomatic guarantees translate to better real-world acceptance of AI systems.

Load-bearing premise

Social choice theory provides a well-suited modelling language for the treatment of collective input across all stages of the ML pipeline and its axiomatic methodology yields principled criteria for evaluating control mechanisms.

What would settle it

An empirical demonstration that a control mechanism violating core social choice axioms produces better societal acceptance or technical performance than one satisfying those axioms.

Figures

Figures reproduced from arXiv: 2605.16291 by Lukas Daniel Klausner, Martin Lackner, Niclas Boehmer, Paul Anton Bachmann.

Figure 1
Figure 1. Figure 1: A sketched ML development process; collective input can be meaningfully incorporated at each [PITH_FULL_IMAGE:figures/full_fig_p005_1.png] view at source ↗
Figure 2
Figure 2. Figure 2: A sketch of our mathematical model, where we view an AI system [PITH_FULL_IMAGE:figures/full_fig_p008_2.png] view at source ↗
read the original abstract

With the growing adoption of AI systems, reasoning about how society can exert control over AI becomes an increasingly urgent problem. Existing work on democratic control largely focuses on macro-level governance. In contrast, we propose a new approach grounded in social choice theory, which we term collective control of artificial intelligence. We argue that collective input can and should be incorporated at multiple points across the ML development pipeline, from data collection through objective design to alignment. We further demonstrate that social choice provides a well-suited modelling language for the treatment of collective input across all stages and that its axiomatic methodology yields principled criteria for evaluating various control mechanisms. Overall, our conceptual contribution provides a mathematically grounded framework to implement and analyse collective control of AI systems.

Editorial analysis

A structured set of objections, weighed in public.

Desk editor's note, referee report, simulated authors' rebuttal, and a circularity audit. Tearing a paper down is the easy half of reading it; the pith above is the substance, this is the friction.

Referee Report

2 major / 2 minor

Summary. The paper proposes a new approach called 'collective control of artificial intelligence' grounded in social choice theory to address societal control over AI systems. It contrasts this with existing macro-level governance work and argues that collective input should be incorporated at multiple stages of the ML development pipeline, including data collection, objective design, and alignment. The authors claim that social choice theory supplies a well-suited modeling language for collective input across these stages and that its axiomatic methodology yields principled criteria for evaluating control mechanisms, providing an overall mathematically grounded framework.

Significance. If the central claim can be substantiated by mapping social choice axioms to concrete, non-vacuous properties of control mechanisms at specific ML stages, the work would offer a valuable bridge between social choice theory and AI governance. This could enable more rigorous, principle-based design and analysis of collective decision processes in AI development, extending beyond high-level policy discussions. The conceptual framing is timely given growing AI adoption, though its immediate significance is constrained by the absence of explicit derivations or examples in the current manuscript.

major comments (2)
  1. [Abstract] Abstract: The assertion that social choice theory 'yields principled criteria for evaluating various control mechanisms' is load-bearing for the central contribution but is not supported by any concrete mapping. No example is given of how a specific axiom (e.g., Pareto efficiency, independence of irrelevant alternatives, or strategy-proofness) would rank or rule out a control mechanism at a named pipeline stage such as objective design or alignment, leaving the criteria at a general level without engaging ML-specific features like high-dimensional objectives or noisy feedback.
  2. [Abstract] Abstract: The claim that social choice provides a 'well-suited modelling language for the treatment of collective input across all stages' is asserted without addressing potential mismatches, such as the fact that many ML stages rely on non-preference-based signals (e.g., gradient updates from human feedback) rather than explicit preference aggregation; a demonstration that standard axioms extend non-trivially to these settings is needed to substantiate suitability.
minor comments (2)
  1. The introduction of the term 'collective control of artificial intelligence' as a new entity would benefit from an explicit comparison table or paragraph distinguishing it from related concepts such as participatory AI, democratic AI, or value alignment.
  2. Consider adding a diagram in the main text that maps social choice mechanisms to specific pipeline stages to improve clarity of the proposed framework.

Simulated Author's Rebuttal

2 responses · 0 unresolved

We thank the referee for their constructive comments, which identify key areas where the manuscript's central claims would benefit from greater concreteness. We address each major comment in turn and indicate the revisions planned for the next version of the manuscript.

read point-by-point responses
  1. Referee: [Abstract] Abstract: The assertion that social choice theory 'yields principled criteria for evaluating various control mechanisms' is load-bearing for the central contribution but is not supported by any concrete mapping. No example is given of how a specific axiom (e.g., Pareto efficiency, independence of irrelevant alternatives, or strategy-proofness) would rank or rule out a control mechanism at a named pipeline stage such as objective design or alignment, leaving the criteria at a general level without engaging ML-specific features like high-dimensional objectives or noisy feedback.

    Authors: We agree that the abstract states the claim at a general level and that a concrete mapping would strengthen the presentation. The manuscript develops the overall framework and indicates how axioms can inform mechanism evaluation at different pipeline stages, but it does not supply the detailed, stage-specific illustrations requested. We will therefore revise by inserting a new illustrative subsection that maps Pareto efficiency to objective design, showing how the axiom rules out aggregation procedures that discard unanimous preferences over particular features and discussing its interaction with high-dimensional objective spaces. revision: yes

  2. Referee: [Abstract] Abstract: The claim that social choice provides a 'well-suited modelling language for the treatment of collective input across all stages' is asserted without addressing potential mismatches, such as the fact that many ML stages rely on non-preference-based signals (e.g., gradient updates from human feedback) rather than explicit preference aggregation; a demonstration that standard axioms extend non-trivially to these settings is needed to substantiate suitability.

    Authors: The referee correctly notes that the suitability claim would be more robust if potential mismatches with non-explicit signals were addressed explicitly. The manuscript treats collective input broadly, including implicit signals derived from feedback, but does not demonstrate non-trivial axiom extensions in detail. In revision we will add a short discussion showing how strategy-proofness can be adapted to noisy human-feedback settings in the alignment stage, thereby supplying a concrete criterion for robust aggregation under gradient-based updates. revision: yes

Circularity Check

0 steps flagged

No significant circularity; proposal applies established external theory

full rationale

The paper's central contribution is a conceptual framework that applies social choice theory—an independently developed field with its own axiomatic literature—to stages of the ML pipeline. The abstract and provided text present this as an argument for suitability and for the value of axiomatic criteria, without any equations, fitted parameters, self-citations that bear the load of a uniqueness claim, or reductions that equate a derived result to its own inputs by construction. No self-definitional loops, renamed empirical patterns, or smuggled ansatzes appear in the given material. The derivation chain therefore remains self-contained against external benchmarks from social choice theory.

Axiom & Free-Parameter Ledger

0 free parameters · 1 axioms · 1 invented entities

Abstract-only review limits visibility into specific parameters or entities; the proposal appears to rest on standard social choice axioms being transferable to AI pipeline decisions.

axioms (1)
  • domain assumption Social choice theory axioms can be applied to model collective preferences over AI development choices.
    Invoked when claiming social choice is well-suited for collective input at multiple pipeline stages.
invented entities (1)
  • Collective control of artificial intelligence no independent evidence
    purpose: Framework for incorporating societal input into AI via social choice methods.
    New term introduced to organize the proposal; no independent evidence or falsifiable prediction provided in abstract.

pith-pipeline@v0.9.0 · 5667 in / 1160 out tokens · 50524 ms · 2026-05-21T01:36:21.752999+00:00 · methodology

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