Understanding On-Site Inspection of Construction Projects Based on Keyword Extraction and Topic Modeling

As an essential way to ensure success of construction projects, on-site inspection involves intensive paperwork, while generating large amounts of textual data. Lack of understanding of information hidden in text-based inspection records always leads to overlooking of important issues and deferred d...

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Main Authors: Jia-Rui Lin, Zhen-Zhong Hu, Jiu-Lin Li, Li-Min Chen
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9246545/
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spelling doaj-941a636432c5446a9fb13d8e19b7a26d2021-03-30T04:04:12ZengIEEEIEEE Access2169-35362020-01-01819850319851710.1109/ACCESS.2020.30352149246545Understanding On-Site Inspection of Construction Projects Based on Keyword Extraction and Topic ModelingJia-Rui Lin0https://orcid.org/0000-0003-2195-8675Zhen-Zhong Hu1https://orcid.org/0000-0001-9653-0097Jiu-Lin Li2Li-Min Chen3Department of Civil Engineering, Tsinghua University, Tsinghua University-Glodon Joint Research Centre for Building Information Model (RCBIM), Tsinghua, ChinaDepartment of Civil Engineering, Tsinghua University, Tsinghua University-Glodon Joint Research Centre for Building Information Model (RCBIM), Tsinghua, ChinaBeijing Urban Construction Group Company Ltd., Beijing, ChinaBeijing National Speed Staking Oval Operation Company Ltd., Beijing, ChinaAs an essential way to ensure success of construction projects, on-site inspection involves intensive paperwork, while generating large amounts of textual data. Lack of understanding of information hidden in text-based inspection records always leads to overlooking of important issues and deferred decisions. Therefore, a novel text mining approach based on keyword extraction and topic modeling is introduced to identify key concerns and their dynamics of on-site issues for better decision-making process. Then, the proposed approach was demonstrated in a real world project and tested with 7250 issue records. Results showed that the proposed method could successfully extract key concerns hidden in texts and identify their changes with time, thereby enabling a more efficient on-site inspection and data-centric decision-making process. This research contributes: (1) to the body of knowledge a new framework for discovering key concerns and their changes with time in texts, and (2) to the state of practice by providing insights on hot topics and their changes with time to reduce on-site issues and make decisions efficiently.https://ieeexplore.ieee.org/document/9246545/On-site inspectiontext miningkeyword extractiontopic modelingdecision makingconstruction management
collection DOAJ
language English
format Article
sources DOAJ
author Jia-Rui Lin
Zhen-Zhong Hu
Jiu-Lin Li
Li-Min Chen
spellingShingle Jia-Rui Lin
Zhen-Zhong Hu
Jiu-Lin Li
Li-Min Chen
Understanding On-Site Inspection of Construction Projects Based on Keyword Extraction and Topic Modeling
IEEE Access
On-site inspection
text mining
keyword extraction
topic modeling
decision making
construction management
author_facet Jia-Rui Lin
Zhen-Zhong Hu
Jiu-Lin Li
Li-Min Chen
author_sort Jia-Rui Lin
title Understanding On-Site Inspection of Construction Projects Based on Keyword Extraction and Topic Modeling
title_short Understanding On-Site Inspection of Construction Projects Based on Keyword Extraction and Topic Modeling
title_full Understanding On-Site Inspection of Construction Projects Based on Keyword Extraction and Topic Modeling
title_fullStr Understanding On-Site Inspection of Construction Projects Based on Keyword Extraction and Topic Modeling
title_full_unstemmed Understanding On-Site Inspection of Construction Projects Based on Keyword Extraction and Topic Modeling
title_sort understanding on-site inspection of construction projects based on keyword extraction and topic modeling
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description As an essential way to ensure success of construction projects, on-site inspection involves intensive paperwork, while generating large amounts of textual data. Lack of understanding of information hidden in text-based inspection records always leads to overlooking of important issues and deferred decisions. Therefore, a novel text mining approach based on keyword extraction and topic modeling is introduced to identify key concerns and their dynamics of on-site issues for better decision-making process. Then, the proposed approach was demonstrated in a real world project and tested with 7250 issue records. Results showed that the proposed method could successfully extract key concerns hidden in texts and identify their changes with time, thereby enabling a more efficient on-site inspection and data-centric decision-making process. This research contributes: (1) to the body of knowledge a new framework for discovering key concerns and their changes with time in texts, and (2) to the state of practice by providing insights on hot topics and their changes with time to reduce on-site issues and make decisions efficiently.
topic On-site inspection
text mining
keyword extraction
topic modeling
decision making
construction management
url https://ieeexplore.ieee.org/document/9246545/
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