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A conceptual framework for ideology beyond the left and right

arXiv cs.CL / 3/20/2026

💬 OpinionIdeas & Deep AnalysisModels & Research

Key Points

  • The paper argues that NLP+CSS research has mostly operationalized ideology along a left-right axis, overlooking other multi-ideology interpretations across issues like race, climate, and gender.
  • It introduces a multi-level socio-cognitive concept network as a framework for understanding ideology and its manifestation in discourse, including its relation to framing.
  • The framework clarifies overlaps between NLP tasks such as stance detection and natural language inference and points to new research directions.
  • It presents the framework as a bridge between computational methods and ideology theory to enable richer analysis of social discourse for both fields.

Abstract

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.