Saved in:
Bibliographic Details
Main Authors: Zhou, Xinyi, Sharma, Ashish, Zhang, Amy X., Althoff, Tim
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.11169
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912812623724544
author Zhou, Xinyi
Sharma, Ashish
Zhang, Amy X.
Althoff, Tim
author_facet Zhou, Xinyi
Sharma, Ashish
Zhang, Amy X.
Althoff, Tim
contents Real-world information, often multimodal, can be misinformed or potentially misleading due to factual errors, outdated claims, missing context, misinterpretation, and more. Such "misinformation" is understudied, challenging to address, and harms many social domains -- particularly on social media, where it can spread rapidly. Manual correction that identifies and explains its (in)accuracies is widely accepted but difficult to scale. While large language models (LLMs) can generate human-like language that could accelerate misinformation correction, they struggle with outdated information, hallucinations, and limited multimodal capabilities. We propose MUSE, an LLM augmented with vision-language modeling and web retrieval over relevant, credible sources to generate responses that determine whether and which part(s) of the given content can be misinformed or potentially misleading, and to explain why with grounded references. We further define a comprehensive set of rubrics to measure response quality, ranging from the accuracy of identifications and factuality of explanations to the relevance and credibility of references. Results show that MUSE consistently produces high-quality outputs across diverse social media content (e.g., modalities, domains, political leanings), including content that has not previously been fact-checked online. Overall, MUSE outperforms GPT-4 by 37% and even high-quality responses from social media users by 29%. Our work provides a general methodological and evaluative framework for correcting misinformation at scale.
format Preprint
id arxiv_https___arxiv_org_abs_2403_11169
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Correcting misinformation on social media with a large language model
Zhou, Xinyi
Sharma, Ashish
Zhang, Amy X.
Althoff, Tim
Computation and Language
Artificial Intelligence
Real-world information, often multimodal, can be misinformed or potentially misleading due to factual errors, outdated claims, missing context, misinterpretation, and more. Such "misinformation" is understudied, challenging to address, and harms many social domains -- particularly on social media, where it can spread rapidly. Manual correction that identifies and explains its (in)accuracies is widely accepted but difficult to scale. While large language models (LLMs) can generate human-like language that could accelerate misinformation correction, they struggle with outdated information, hallucinations, and limited multimodal capabilities. We propose MUSE, an LLM augmented with vision-language modeling and web retrieval over relevant, credible sources to generate responses that determine whether and which part(s) of the given content can be misinformed or potentially misleading, and to explain why with grounded references. We further define a comprehensive set of rubrics to measure response quality, ranging from the accuracy of identifications and factuality of explanations to the relevance and credibility of references. Results show that MUSE consistently produces high-quality outputs across diverse social media content (e.g., modalities, domains, political leanings), including content that has not previously been fact-checked online. Overall, MUSE outperforms GPT-4 by 37% and even high-quality responses from social media users by 29%. Our work provides a general methodological and evaluative framework for correcting misinformation at scale.
title Correcting misinformation on social media with a large language model
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2403.11169