LLM-guided headline rewriting for clickability enhancement without clickbait
Yehudit Aperstein, Linoy Halifa, Sagiv Bar, Alexander Apartsin

TL;DR
This paper introduces a controllable headline rewriting method using large language models guided by auxiliary models to enhance engagement without resorting to clickbait, balancing attractiveness with editorial trust.
Contribution
It presents a novel framework that leverages FUDGE-guided LLMs with dual guidance models to generate headlines that are engaging yet faithful and non-clickbaity.
Findings
Effective control over headline clickability and faithfulness.
Ability to generate headlines along a continuum from neutral to engaging.
Framework supports responsible headline optimization in journalism.
Abstract
Enhancing reader engagement while preserving informational fidelity is a central challenge in controllable text generation for news media. Optimizing news headlines for reader engagement is often conflated with clickbait, resulting in exaggerated or misleading phrasing that undermines editorial trust. We frame clickbait not as a separate stylistic category, but as an extreme outcome of disproportionate amplification of otherwise legitimate engagement cues. Based on this view, we formulate headline rewriting as a controllable generation problem, where specific engagement-oriented linguistic attributes are selectively strengthened under explicit constraints on semantic faithfulness and proportional emphasis. We present a guided headline rewriting framework built on a large language model (LLM) that uses the Future Discriminators for Generation (FUDGE) paradigm for inference-time control.…
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Taxonomy
TopicsMisinformation and Its Impacts · Humor Studies and Applications · Sentiment Analysis and Opinion Mining
