AICLFeb 26, 2024

Value Preferences Estimation and Disambiguation in Hybrid Participatory Systems

arXiv:2402.16751v310 citationsh-index: 52JAIR
AI Analysis

This work addresses citizen-centric policy-making by improving value preference estimation, but it is incremental as it builds on existing methods with limited gains.

The paper tackled the problem of estimating citizens' value preferences in hybrid participatory systems by addressing inconsistencies between their choices and motivations, showing that explicitly handling these inconsistencies improves estimation accuracy, though the disambiguation strategy did not substantially outperform baselines.

Understanding citizens' values in participatory systems is crucial for citizen-centric policy-making. We envision a hybrid participatory system where participants make choices and provide motivations for those choices, and AI agents estimate their value preferences by interacting with them. We focus on situations where a conflict is detected between participants' choices and motivations, and propose methods for estimating value preferences while addressing detected inconsistencies by interacting with the participants. We operationalize the philosophical stance that "valuing is deliberatively consequential." That is, if a participant's choice is based on a deliberation of value preferences, the value preferences can be observed in the motivation the participant provides for the choice. Thus, we propose and compare value preferences estimation methods that prioritize the values estimated from motivations over the values estimated from choices alone. Then, we introduce a disambiguation strategy that combines Natural Language Processing and Active Learning to address the detected inconsistencies between choices and motivations. We evaluate the proposed methods on a dataset of a large-scale survey on energy transition. The results show that explicitly addressing inconsistencies between choices and motivations improves the estimation of an individual's value preferences. The disambiguation strategy does not show substantial improvements when compared to similar baselines--however, we discuss how the novelty of the approach can open new research avenues and propose improvements to address the current limitations.

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