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Analyzing Project Similarity in Korean Bidding Documents Using BERT

  • Inwoo Jung (Department of Future & Smart Construction Research, Korea Institute of Civil Engineering and Building Technology) ;
  • Hyunseok Moon (Department of Future & Smart Construction Research, Korea Institute of Civil Engineering and Building Technology) ;
  • Jeongsoo Kim (Department of Future & Smart Construction Research, Korea Institute of Civil Engineering and Building Technology)
  • 발행 : 2024.07.29

초록

In bidding documents, valuable information about the project exists in the form of text. When undertaking a new bid, it is necessary to refer to relevant documents from previous bidding projects, similar to the current one, to effectively understand the requirements and characteristics of the project. However, manually comparing and analyzing these documents is a time-consuming and costly process. Especially with the incorporation of emerging technologies like BIM, comparing and analyzing documents involving these new technologies requires a deeper level of expertise and understanding, posing a significant challenge. To tackle this knowledge gap, this study aims to develop a BERT-based approach to assess project similarity for Korean bidding documents. To achieve the research goal, a two-stage strategy was adopted: 1) the development of a Korean tokenizer for bidding documents in BIM technology, and 2) word embedding using BERT and project similarity analysis employing cosine similarity. The developed BERT-based similarity analysis model can automatically evaluate each project and identify the most similar project. By matching target projects with the best benchmarks, this research can assist individuals in making more accurate and timely decisions.

키워드

참고문헌

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