Tianlong Shan , Fan Zhang , Albert P.C. Chan , Shiyao Zhu , Kaijian Li , Linyan Chen , Yifan Wu
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引用次数: 0
Abstract
Enhancing building health resilience (BHR) is a crucial pathway to mitigate people's health loss under natural or manmade disturbances. However, as BHR is quite a new concept, previous research lacks a comprehensive investigation and deep understanding of BHR influencing factors. Topic modeling method is innovative to extract topics from multi-source data, including literature, news, reports and other unstructured online data, which could fill the gap of lacking sufficient literatures and other sources support. This study aims to explore BHR influencing factors by integrating and literature review-based identification and topic modeling method. Due to ChatGPT's exceptional ability to extract information from unstructured text data, an integrated ChatGPT-empowered BERTopic (BERTGPT) model is proposed for multi-source exploration, exploring BHR influencing factors by twice ChatGPT empowerment in BERTopic, which can act as a supplementary of literature-based identification. Results show that BHR influencing factors comes from four dimensions: building attributes, building environment, building demographics, and human behavior. Furthermore, this model was validated by classification accuracy and summarization precision, demonstrating the model's effectiveness in extracting representative topics from multi-source unstructured data. This study integrated the factors identified from the literature and multi-source data, providing a clear direction for BHR enhancement. This study also develops a novel AI-enabled approach for exploring potential factors influencing BHR and other emerging concepts lacking sufficient literature support, utilizing multi-source unstructured data.
期刊介绍:
Environmental Impact Assessment Review is an interdisciplinary journal that serves a global audience of practitioners, policymakers, and academics involved in assessing the environmental impact of policies, projects, processes, and products. The journal focuses on innovative theory and practice in environmental impact assessment (EIA). Papers are expected to present innovative ideas, be topical, and coherent. The journal emphasizes concepts, methods, techniques, approaches, and systems related to EIA theory and practice.