Nexus Network Journal, volume 27, issue 1, pages 203-220
Composing Conversational Architecture by Integrating Large Language Model: From Reactive to Suggestive Architecture through Exploring the Mathematical Nature of the Transformer Model
Lok Hang Cheung
1
,
Giancarlo Di Marco
1
Publication type: Journal Article
Publication date: 2024-11-26
Journal:
Nexus Network Journal
scimago Q1
wos Q2
SJR: 0.358
CiteScore: 1.1
Impact factor: 0.7
ISSN: 15224600, 15905896
Abstract
First proposed in the 1960s, Conversational Architecture enhances human and computer-integrated built environment interaction. Nowadays, most interactive designs are based on reaction and automation, rarely on conversation. Despite Natural Language Processing, including Large Language Model (LLM), being considered a candidate for Human-Computer Interaction (HCI), LLM applications are limited to verbal communication. The syntactic relationship between LLM, and architectural composition is underexplored. The paper proposes a qualitative framework to integrate the theoretical research of LLM and HCI in Conversational Architecture design. Through a mathematical and algorithmic analysis of a transformer model, the key component of LLM, its attributes are mapped onto Conversational Architecture parameters. With the identified design implications, a theatre hall design experiment is conducted. Through observation, the feasibility and challenges of the proposed framework are analysed.
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