Saved in:
Bibliographic Details
Main Authors: Morio, Gaku, Rowlands, Harri, Stammbach, Dominik, Manning, Christopher D., Henderson, Peter
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.21679
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866915574736486400
author Morio, Gaku
Rowlands, Harri
Stammbach, Dominik
Manning, Christopher D.
Henderson, Peter
author_facet Morio, Gaku
Rowlands, Harri
Stammbach, Dominik
Manning, Christopher D.
Henderson, Peter
contents Companies spend large amounts of money on public relations campaigns to project a positive brand image. However, sometimes there is a mismatch between what they say and what they do. Oil & gas companies, for example, are accused of "greenwashing" with imagery of climate-friendly initiatives. Understanding the framing, and changes in framing, at scale can help better understand the goals and nature of public relations campaigns. To address this, we introduce a benchmark dataset of expert-annotated video ads obtained from Facebook and YouTube. The dataset provides annotations for 13 framing types for more than 50 companies or advocacy groups across 20 countries. Our dataset is especially designed for the evaluation of vision-language models (VLMs), distinguishing it from past text-only framing datasets. Baseline experiments show some promising results, while leaving room for improvement for future work: GPT-4.1 can detect environmental messages with 79% F1 score, while our best model only achieves 46% F1 score on identifying framing around green innovation. We also identify challenges that VLMs must address, such as implicit framing, handling videos of various lengths, or implicit cultural backgrounds. Our dataset contributes to research in multimodal analysis of strategic communication in the energy sector.
format Preprint
id arxiv_https___arxiv_org_abs_2510_21679
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Multimodal Benchmark for Framing of Oil & Gas Advertising and Potential Greenwashing Detection
Morio, Gaku
Rowlands, Harri
Stammbach, Dominik
Manning, Christopher D.
Henderson, Peter
Artificial Intelligence
Companies spend large amounts of money on public relations campaigns to project a positive brand image. However, sometimes there is a mismatch between what they say and what they do. Oil & gas companies, for example, are accused of "greenwashing" with imagery of climate-friendly initiatives. Understanding the framing, and changes in framing, at scale can help better understand the goals and nature of public relations campaigns. To address this, we introduce a benchmark dataset of expert-annotated video ads obtained from Facebook and YouTube. The dataset provides annotations for 13 framing types for more than 50 companies or advocacy groups across 20 countries. Our dataset is especially designed for the evaluation of vision-language models (VLMs), distinguishing it from past text-only framing datasets. Baseline experiments show some promising results, while leaving room for improvement for future work: GPT-4.1 can detect environmental messages with 79% F1 score, while our best model only achieves 46% F1 score on identifying framing around green innovation. We also identify challenges that VLMs must address, such as implicit framing, handling videos of various lengths, or implicit cultural backgrounds. Our dataset contributes to research in multimodal analysis of strategic communication in the energy sector.
title A Multimodal Benchmark for Framing of Oil & Gas Advertising and Potential Greenwashing Detection
topic Artificial Intelligence
url https://arxiv.org/abs/2510.21679