NLP-based regulatory compliance – using GPT 4.0 to decode regulatory documents
Kumar, Bimal and Roussinov, Dmitri (2024) NLP-based regulatory compliance – using GPT 4.0 to decode regulatory documents. In: Georg Nemetschek Institute Symposium & Expo on Artificial Intelligence for the Built World, 2024-09-10 - 2024-09-12.
Text.
Filename: Kumar-Roussinov-GNIS-2024-NLP-based-regulatory-compliance-using-GPT-4-0-to-decode.pdf
Accepted Author Manuscript Restricted to Repository staff only until 1 January 2099. Download (753kB) | Request a copy |
Abstract
The well-publicised Hackitt Review (Hackitt, 2018) into the Grenfell Tower disaster points to some of the main reasons behind the ill-fated fire in the London blocks of flats in 2017. To avert similar disasters in future, Dame Hackitt recommended that the building regulations and associated guidance, including the Approved Documents in the UK, need to be authored, applied and enforced in a fundamentally different way: “[...] the current regulatory system for ensuring fire safety in high-rise and complex buildings is not fit for purpose.” In the UK, currently there are some 485 standards, 85 other government guidance, 176 industry guidance, and 79 other government legislation documents (MHCLG, 2020) that a building design must comply with. The corpus suffers from various challenges that include inconsistent use of terms, ambiguities, contradictions and lack of clarity necessitating interpretations of requirements.
ORCID iDs
Kumar, Bimal and Roussinov, Dmitri ORCID: https://orcid.org/0000-0002-9313-2234;-
-
Item type: Conference or Workshop Item(Paper) ID code: 91230 Dates: DateEvent12 September 2024Published15 August 2024AcceptedSubjects: Science > Mathematics > Electronic computers. Computer science > Other topics, A-Z > Human-computer interaction Department: Faculty of Science > Computer and Information Sciences Depositing user: Pure Administrator Date deposited: 21 Nov 2024 17:08 Last modified: 21 Nov 2024 17:08 Related URLs: URI: https://strathprints.strath.ac.uk/id/eprint/91230