Event-Centric Human Value Understanding in News-Domain Texts: An Actor-Conditioned, Multi-Granularity Benchmark
Yao Wang, Xin Liu, Zhuochen Liu, Jiankang Chen, Adam Jatowt, Kyoungsook Kim, Noriko Kando, Haitao Yu

TL;DR
NEVU is a comprehensive benchmark for evaluating models on actor-conditioned, event-centric human value understanding in news texts, addressing limitations of previous datasets by incorporating explicit event structure and value direction.
Contribution
The paper introduces NEVU, a novel benchmark with hierarchical annotations for fine-grained, actor-conditioned value recognition in news articles, supported by an LLM-assisted annotation pipeline.
Findings
Lightweight adaptation improves open-source model performance.
NEVU covers extensive value and context annotations.
Models struggle with fine-grained, actor-specific value attribution.
Abstract
Existing human value datasets do not directly support value understanding in factual news: many are actor-agnostic, rely on isolated utterances or synthetic scenarios, and lack explicit event structure or value direction. We present \textbf{NEVU} (\textbf{N}ews \textbf{E}vent-centric \textbf{V}alue \textbf{U}nderstanding), a benchmark for \emph{actor-conditioned}, \emph{event-centric}, and \emph{direction-aware} human value recognition in factual news. NEVU evaluates whether models can identify value cues, attribute them to the correct actor, and determine value direction from grounded evidence. Built from 2{,}865 English news articles, NEVU organizes annotations at four semantic unit levels (\textbf{Subevent}, \textbf{behavior-based composite event}, \textbf{story-based composite event}, and \textbf{Article}) and labels \mbox{(unit, actor)} pairs for fine-grained evaluation across…
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Taxonomy
TopicsTopic Modeling · Multimodal Machine Learning Applications · Sentiment Analysis and Opinion Mining
