TY - GEN
T1 - Automatic Cause Inference of Construction Accident Using Long Short-Term Memory Neural Networks
AU - Wu, Hengqin
AU - Shen, Geoffrey Qiping
AU - Zhou, Zhenzong
AU - Li, Wenpeng
AU - Li, Xin
N1 - Publisher Copyright:
© 2022 ICCREM 2022: Carbon Peak and Neutrality Strategies of the Construction Industry - Proceedings of the International Conference on Construction and Real Estate Management 2022. All rights reserved.
PY - 2022/12
Y1 - 2022/12
N2 - Research of predicting the causes of construction accidents from documents has attracted increased interest in the passing three decades. One main branch of this type of research is to use automatic methods to enable effective causal inference from a large amount of textual data. To improve the accuracy and reduce labor resources required, learning-based methods have been successfully employed over full texts of construction accident reports. However, to date, these methods are not capable of wide application in the construction industry, where most of the accident narratives are recorded as short texts. Moreover, the data imbalance problem is a frequent bottleneck in the classification performance. To achieve a higher degree of adaptability for construction accident classification, this study develops a framework consisting of data augmentation, Bi-LSTM and self-attention neural networks, and focal loss objective function, which is trained and tested over two data sets consisting of short-text and imbalanced data. The validation results showed that, even with much less information provided in the short texts, the proposed model has superior performance to existing methods.
AB - Research of predicting the causes of construction accidents from documents has attracted increased interest in the passing three decades. One main branch of this type of research is to use automatic methods to enable effective causal inference from a large amount of textual data. To improve the accuracy and reduce labor resources required, learning-based methods have been successfully employed over full texts of construction accident reports. However, to date, these methods are not capable of wide application in the construction industry, where most of the accident narratives are recorded as short texts. Moreover, the data imbalance problem is a frequent bottleneck in the classification performance. To achieve a higher degree of adaptability for construction accident classification, this study develops a framework consisting of data augmentation, Bi-LSTM and self-attention neural networks, and focal loss objective function, which is trained and tested over two data sets consisting of short-text and imbalanced data. The validation results showed that, even with much less information provided in the short texts, the proposed model has superior performance to existing methods.
UR - http://www.scopus.com/inward/record.url?scp=85146371056&partnerID=8YFLogxK
U2 - 10.1061/9780784484562.029
DO - 10.1061/9780784484562.029
M3 - Conference article published in proceeding or book
AN - SCOPUS:85146371056
T3 - ICCREM 2022: Carbon Peak and Neutrality Strategies of the Construction Industry - Proceedings of the International Conference on Construction and Real Estate Management 2022
SP - 269
EP - 275
BT - ICCREM 2022
A2 - Wang, Yaowu
A2 - Lin, Shaohua
A2 - Shen, Geoffrey Q. P.
PB - American Society of Civil Engineers (ASCE)
T2 - 2022 International Conference on Construction and Real Estate Management: Carbon Peak and Neutrality Strategies of the Construction Industry, ICCREM 2022
Y2 - 17 December 2022 through 18 December 2022
ER -