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Main Authors: Dobrinoiu, Adina Nicola, Marcu, Ana Cristiana, Homayounirad, Amir, Siebert, Luciano Cavalcante, Liscio, Enrico
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.01976
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author Dobrinoiu, Adina Nicola
Marcu, Ana Cristiana
Homayounirad, Amir
Siebert, Luciano Cavalcante
Liscio, Enrico
author_facet Dobrinoiu, Adina Nicola
Marcu, Ana Cristiana
Homayounirad, Amir
Siebert, Luciano Cavalcante
Liscio, Enrico
contents Our interpretation of value concepts is shaped by our sociocultural background and lived experiences, and is thus subjective. Recognizing individual value interpretations is important for developing AI systems that can align with diverse human perspectives and avoid bias toward majority viewpoints. To this end, we investigate whether a language model can predict individual value interpretations by leveraging multi-dimensional subjective annotations as a proxy for their interpretive lens. That is, we evaluate whether providing examples of how an individual annotates Sentiment, Emotion, Argument, and Topics (SEAT dimensions) helps a language model in predicting their value interpretations. Our experiment across different zero- and few-shot settings demonstrates that providing all SEAT dimensions simultaneously yields superior performance compared to individual dimensions and a baseline where no information about the individual is provided. Furthermore, individual variations across annotators highlight the importance of accounting for the incorporation of individual subjective annotators. To the best of our knowledge, this controlled setting, although small in size, is the first attempt to go beyond demographics and investigate the impact of annotation behavior on value prediction, providing a solid foundation for future large-scale validation.
format Preprint
id arxiv_https___arxiv_org_abs_2510_01976
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Taking a SEAT: Predicting Value Interpretations from Sentiment, Emotion, Argument, and Topic Annotations
Dobrinoiu, Adina Nicola
Marcu, Ana Cristiana
Homayounirad, Amir
Siebert, Luciano Cavalcante
Liscio, Enrico
Computation and Language
Our interpretation of value concepts is shaped by our sociocultural background and lived experiences, and is thus subjective. Recognizing individual value interpretations is important for developing AI systems that can align with diverse human perspectives and avoid bias toward majority viewpoints. To this end, we investigate whether a language model can predict individual value interpretations by leveraging multi-dimensional subjective annotations as a proxy for their interpretive lens. That is, we evaluate whether providing examples of how an individual annotates Sentiment, Emotion, Argument, and Topics (SEAT dimensions) helps a language model in predicting their value interpretations. Our experiment across different zero- and few-shot settings demonstrates that providing all SEAT dimensions simultaneously yields superior performance compared to individual dimensions and a baseline where no information about the individual is provided. Furthermore, individual variations across annotators highlight the importance of accounting for the incorporation of individual subjective annotators. To the best of our knowledge, this controlled setting, although small in size, is the first attempt to go beyond demographics and investigate the impact of annotation behavior on value prediction, providing a solid foundation for future large-scale validation.
title Taking a SEAT: Predicting Value Interpretations from Sentiment, Emotion, Argument, and Topic Annotations
topic Computation and Language
url https://arxiv.org/abs/2510.01976