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Main Authors: Afroz, Zeba, Vardhan, Harsh, Bhakuni, Pawan, Punia, Aanchal, Kumar, Rajdeep, Akhtar, Md. Shad
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.03582
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author Afroz, Zeba
Vardhan, Harsh
Bhakuni, Pawan
Punia, Aanchal
Kumar, Rajdeep
Akhtar, Md. Shad
author_facet Afroz, Zeba
Vardhan, Harsh
Bhakuni, Pawan
Punia, Aanchal
Kumar, Rajdeep
Akhtar, Md. Shad
contents Narratives are the cognitive and emotional scaffolds of propaganda. They organize isolated persuasive techniques into coherent stories that justify actions, attribute blame, and evoke identification with ideological camps. In this paper, we propose a novel fine-grained narrative classification in biased news articles. We also explore article-bias classification as the precursor task to narrative classification and fine-grained persuasive technique identification. We develop INDI-PROP, the first ideologically grounded fine-grained narrative dataset with multi-level annotation for analyzing propaganda in Indian news media. Our dataset INDI-PROP comprises 1,266 articles focusing on two polarizing socio-political events in recent times: CAA and the Farmers' protest. Each article is annotated at three hierarchical levels: (i) ideological article-bias (pro-government, pro-opposition, neutral), (ii) event-specific fine-grained narrative frames anchored in ideological polarity and communicative intent, and (iii) persuasive techniques. We propose FANTA and TPTC, two GPT-4o-mini guided multi-hop prompt-based reasoning frameworks for the bias, narrative, and persuasive technique classification. FANTA leverages multi-layered communicative phenomena by integrating information extraction and contextual framing for hierarchical reasoning. On the other hand, TPTC adopts systematic decomposition of persuasive cues via a two-stage approach. Our evaluation suggests substantial improvement over underlying baselines in each case.
format Preprint
id arxiv_https___arxiv_org_abs_2512_03582
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Fine-grained Narrative Classification in Biased News Articles
Afroz, Zeba
Vardhan, Harsh
Bhakuni, Pawan
Punia, Aanchal
Kumar, Rajdeep
Akhtar, Md. Shad
Computation and Language
Artificial Intelligence
Narratives are the cognitive and emotional scaffolds of propaganda. They organize isolated persuasive techniques into coherent stories that justify actions, attribute blame, and evoke identification with ideological camps. In this paper, we propose a novel fine-grained narrative classification in biased news articles. We also explore article-bias classification as the precursor task to narrative classification and fine-grained persuasive technique identification. We develop INDI-PROP, the first ideologically grounded fine-grained narrative dataset with multi-level annotation for analyzing propaganda in Indian news media. Our dataset INDI-PROP comprises 1,266 articles focusing on two polarizing socio-political events in recent times: CAA and the Farmers' protest. Each article is annotated at three hierarchical levels: (i) ideological article-bias (pro-government, pro-opposition, neutral), (ii) event-specific fine-grained narrative frames anchored in ideological polarity and communicative intent, and (iii) persuasive techniques. We propose FANTA and TPTC, two GPT-4o-mini guided multi-hop prompt-based reasoning frameworks for the bias, narrative, and persuasive technique classification. FANTA leverages multi-layered communicative phenomena by integrating information extraction and contextual framing for hierarchical reasoning. On the other hand, TPTC adopts systematic decomposition of persuasive cues via a two-stage approach. Our evaluation suggests substantial improvement over underlying baselines in each case.
title Fine-grained Narrative Classification in Biased News Articles
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2512.03582