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Evaluating the Effectiveness of GPT Large Language Model for News Classification in the IPTC News Ontology | IEEE Journals & Magazine | IEEE Xplore
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Evaluating the Effectiveness of GPT Large Language Model for News Classification in the IPTC News Ontology


Prompt formulation strategies for ontological multi-level classification task.

Abstract:

News classification plays a vital role in newsrooms, as it involves the time-consuming task of categorizing news articles and requires domain knowledge. Effective news cl...Show More

Abstract:

News classification plays a vital role in newsrooms, as it involves the time-consuming task of categorizing news articles and requires domain knowledge. Effective news classification is essential for categorizing and organizing a constant flow of information, serving as the foundation for subsequent tasks, such as news aggregation, monitoring, filtering, and organization. The automation of this process can significantly benefit newsrooms by saving time and resources. In this study, we explore the potential of the GPT large language model in a zero-shot setting for multi-class classification of news articles within the widely accepted International Press Telecommunications Council (IPTC) news ontology. The IPTC news ontology provides a structured framework for categorizing news, facilitating the efficient organization and retrieval of news content. By investigating the effectiveness of the GPT language model in this classification task, we aimed to understand its capabilities and potential applications in the news domain. This study was conducted as part of our ongoing research in the field of automated journalism.
Prompt formulation strategies for ontological multi-level classification task.
Published in: IEEE Access ( Volume: 11)
Page(s): 145386 - 145394
Date of Publication: 21 December 2023
Electronic ISSN: 2169-3536

Funding Agency:


References

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