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Main Authors: Upravitelev, Max, Solopova, Veronika, Jakob, Charlott, Sahitaj, Premtim, Möller, Sebastian, Schmitt, Vera
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.22015
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_version_ 1866917365485142016
author Upravitelev, Max
Solopova, Veronika
Jakob, Charlott
Sahitaj, Premtim
Möller, Sebastian
Schmitt, Vera
author_facet Upravitelev, Max
Solopova, Veronika
Jakob, Charlott
Sahitaj, Premtim
Möller, Sebastian
Schmitt, Vera
contents Detecting climate disinformation narratives typically relies on fixed taxonomies, which do not accommodate emerging narratives. Thus, we re-frame narrative detection as a retrieval task: given a narrative's core message as a query, rank texts from a corpus by alignment with that narrative. This formulation requires no predefined label set and can accommodate emerging narratives. We repurpose three climate disinformation datasets (CARDS, Climate Obstruction, climate change subset of PolyNarrative) for retrieval evaluation and propose SpecFi, a framework that generates hypothetical documents to bridge the gap between abstract narrative descriptions and their concrete textual instantiations. SpecFi uses community summaries from graph-based community detection as few-shot examples for generation, achieving a MAP of 0.505 on CARDS without access to narrative labels. We further introduce narrative variance, an embedding-based difficulty metric, and show via partial correlation analysis that standard retrieval degrades on high-variance narratives (BM25 loses 63.4% of MAP), while SpecFi-CS remains robust (32.7% loss). Our analysis also reveals that unsupervised community summaries converge on descriptions close to expert-crafted taxonomies, suggesting that graph-based methods can surface narrative structure from unlabeled text.
format Preprint
id arxiv_https___arxiv_org_abs_2603_22015
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Retrieving Climate Change Disinformation by Narrative
Upravitelev, Max
Solopova, Veronika
Jakob, Charlott
Sahitaj, Premtim
Möller, Sebastian
Schmitt, Vera
Computation and Language
Detecting climate disinformation narratives typically relies on fixed taxonomies, which do not accommodate emerging narratives. Thus, we re-frame narrative detection as a retrieval task: given a narrative's core message as a query, rank texts from a corpus by alignment with that narrative. This formulation requires no predefined label set and can accommodate emerging narratives. We repurpose three climate disinformation datasets (CARDS, Climate Obstruction, climate change subset of PolyNarrative) for retrieval evaluation and propose SpecFi, a framework that generates hypothetical documents to bridge the gap between abstract narrative descriptions and their concrete textual instantiations. SpecFi uses community summaries from graph-based community detection as few-shot examples for generation, achieving a MAP of 0.505 on CARDS without access to narrative labels. We further introduce narrative variance, an embedding-based difficulty metric, and show via partial correlation analysis that standard retrieval degrades on high-variance narratives (BM25 loses 63.4% of MAP), while SpecFi-CS remains robust (32.7% loss). Our analysis also reveals that unsupervised community summaries converge on descriptions close to expert-crafted taxonomies, suggesting that graph-based methods can surface narrative structure from unlabeled text.
title Retrieving Climate Change Disinformation by Narrative
topic Computation and Language
url https://arxiv.org/abs/2603.22015