LLM Reasoning 相关度: 6/10

A conceptual framework for ideology beyond the left and right

Kenneth Joseph, Kim Williams, David Lazer
arXiv: 2603.18945v1 发布: 2026-03-19 更新: 2026-03-19

AI 摘要

论文提出了一种新的意识形态框架,超越了传统的左右划分,用于更细致地分析社会话语。

主要贡献

  • 提出了一种基于社会认知网络的多层次意识形态框架
  • 阐明了该框架如何连接现有NLP任务(如立场检测和自然语言推理)
  • 揭示了新的研究方向,促进计算方法与意识形态理论的结合

方法论

该研究构建了一个意识形态概念网络,并解释了意识形态如何在话语中体现,以及与其他社会过程(如框架效应)的关系。

原文摘要

NLP+CSS work has operationalized ideology almost exclusively on a left/right partisan axis. This approach obscures the fact that people hold interpretations of many different complex and more specific ideologies on issues like race, climate, and gender. We introduce a framework that understands ideology as an attributed, multi-level socio-cognitive concept network, and explains how ideology manifests in discourse in relation to other relevant social processes like framing. We demonstrate how this framework can clarifies overlaps between existing NLP tasks (e.g. stance detection and natural language inference) and also how it reveals new research directions. Our work provides a unique and important bridge between computational methods and ideology theory, enabling richer analysis of social discourse in a way that benefits both fields.

标签

Ideology NLP Social Discourse Framing

arXiv 分类

cs.CY cs.CL