AICLOct 24, 2025

LLM-Generated Negative News Headlines Dataset: Creation and Benchmarking Against Real Journalism

arXiv:2511.11591v1h-index: 14
Originality Incremental advance
AI Analysis

This work addresses data scarcity and privacy issues for NLP researchers, but it is incremental as it focuses on a specific type of synthetic data.

The research tackled the challenge of data acquisition and privacy in NLP by creating a dataset of LLM-generated negative news headlines, which matched real headlines in most metrics except for proper noun usage.

This research examines the potential of datasets generated by Large Language Models (LLMs) to support Natural Language Processing (NLP) tasks, aiming to overcome challenges related to data acquisition and privacy concerns associated with real-world data. Focusing on negative valence text, a critical component of sentiment analysis, we explore the use of LLM-generated synthetic news headlines as an alternative to real-world data. A specialized corpus of negative news headlines was created using tailored prompts to capture diverse negative sentiments across various societal domains. The synthetic headlines were validated by expert review and further analyzed in embedding space to assess their alignment with real-world negative news in terms of content, tone, length, and style. Key metrics such as correlation with real headlines, perplexity, coherence, and realism were evaluated. The synthetic dataset was benchmarked against two sets of real news headlines using evaluations including the Comparative Perplexity Test, Comparative Readability Test, Comparative POS Profiling, BERTScore, and Comparative Semantic Similarity. Results show the generated headlines match real headlines with the only marked divergence being in the proper noun score of the POS profile test.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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