Using generative AI to support standardization work -- the case of 3GPP
Software Engineering and Advanced Applications, 2024 Standardization processes build upon consensus between partners, which depends on their ability to identify points of disagreement and resolving them. Large standardization organizations, like the 3GPP or ISO, rely on leaders of work packages who...
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Zusammenfassung: | Software Engineering and Advanced Applications, 2024 Standardization processes build upon consensus between partners, which
depends on their ability to identify points of disagreement and resolving them.
Large standardization organizations, like the 3GPP or ISO, rely on leaders of
work packages who can correctly, and efficiently, identify disagreements,
discuss them and reach a consensus. This task, however, is effort-,
labor-intensive and costly. In this paper, we address the problem of
identifying similarities, dissimilarities and discussion points using large
language models. In a design science research study, we work with one of the
organizations which leads several workgroups in the 3GPP standard. Our goal is
to understand how well the language models can support the standardization
process in becoming more cost-efficient, faster and more reliable. Our results
show that generic models for text summarization correlate well with domain
expert's and delegate's assessments (Pearson correlation between 0.66 and
0.98), but that there is a need for domain-specific models to provide better
discussion materials for the standardization groups. |
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DOI: | 10.48550/arxiv.2408.12611 |