NewsLens: A Multi-Agent Framework for Adversarial News Bias Navigation
Joy Bose

TL;DR
NewsLens introduces a multi-agent adversarial framework that deconstructs news articles to reveal bias, omissions, and framing strategies, advancing interpretability in media bias detection.
Contribution
It presents a novel multi-agent pipeline for structured bias navigation, extending prior lexical work to LLM reasoning, and is fully reproducible with open models.
Findings
Center outlets have the highest Perspective Divergence Score.
Conservative outlets show the highest Manipulation Index.
High-propaganda content is consistently identified across models.
Abstract
Media bias detection has predominantly been framed as a classification task: assign a political label to an article or outlet. We argue this framing is too shallow: it identifies that bias exists but not where, how, or crucially, what is structurally omitted. We present NewsLens, a five-agent adversarial pipeline for structured news bias navigation. A Fact Verifier, Progressive Framing Analyst, Conservative Framing Analyst, Propaganda Detector, and Neutral Summarizer collaborate to deconstruct articles into interpretable framing maps, exposing ideological omissions, rhetorical manipulation, and framing boundaries. The system is evaluated on 15 articles across four geopolitical event clusters (India-Pakistan Kashmir, Gaza, Climate Policy, Ukraine) using Qwen2.5-3B-Instruct (4-bit quantised, Google Colab T4), with cross-model validation using Mistral 7B on the Kashmir cluster. Center…
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