Zero-Shot Learning and Key Points Are All You Need for Automated Fact-Checking
Automated fact-checking is an important task because determining the accurate status of a proposed claim within the vast amount of information available online is a critical challenge. This challenge requires robust evaluation to prevent the spread of false information. Modern large language models...
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Zusammenfassung: | Automated fact-checking is an important task because determining the accurate
status of a proposed claim within the vast amount of information available
online is a critical challenge. This challenge requires robust evaluation to
prevent the spread of false information. Modern large language models (LLMs)
have demonstrated high capability in performing a diverse range of Natural
Language Processing (NLP) tasks. By utilizing proper prompting strategies,
their versatility due to their understanding of large context sizes and
zero-shot learning ability enables them to simulate human problem-solving
intuition and move towards being an alternative to humans for solving problems.
In this work, we introduce a straightforward framework based on Zero-Shot
Learning and Key Points (ZSL-KeP) for automated fact-checking, which despite
its simplicity, performed well on the AVeriTeC shared task dataset by robustly
improving the baseline and achieving 10th place. |
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DOI: | 10.48550/arxiv.2408.08400 |