Internal Pluralism and the Limits of Pairwise Comparisons

A new study reveals that traditional pairwise comparisons used to align AI with human preferences have critical limitations due to the complexity of human decision-making. By modeling 'internal pluralism', researchers suggest that allowing users to express indecision can significantly improve preference-learning efficiency.
Computer Science > Artificial Intelligence
Title:Internal Pluralism and the Limits of Pairwise Comparisons
View PDF HTML (experimental)Abstract:Local pairwise comparisons are a standard tool for learning how people want decision rules to work, e.g., in participatory design or alignment. However, their use builds in two strong assumptions: that local comparisons are sufficient evidence about how a person wants an automated decision rule to behave, and that people can always answer those comparisons decisively. We investigate how these assumptions may be compromised under internal pluralism: the idea that an individual evaluates decision rules according to multiple authoritative priorities about how the rule should behave. We provide a formal model of such pluralistic preferences over decision rules, which then lets us identify two distinct failures of forced local pairwise comparison data. First, priorities such as proportionality, egalitarianism, and equal treatment are inherently global: what they imply in one case can depend on what happens elsewhere, so local comparisons may fail to capture them. Second, even when priorities are representable locally, tension between strongly-held priorities can generate internal conflict, producing potentially costly behavioral distortions when comparisons are forced. We then use our model to investigate the alternative -- allowing people to report indecision -- and our findings suggest that doing so can considerably reduce the number of queries needed to learn preferences accurately. We conclude by describing how our model points toward preference-learning methods that elicit these priorities directly, yielding more faithful and interpretable accounts of what people value.
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Source: arXiv cs.AI Recent
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