Graph neural network with self-attention and multi-task learning for credit default risk prediction
We propose a graph neural network with self-attention and multi-task learning (SaM-GNN) to leverage the advantages of deep learning for credit default risk prediction. Our approach incorporates two parallel tasks based on shared intermediate vectors for input vector reconstruction and credit default...
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sg-smu-ink.sis_research-85182023-08-07T01:13:24Z Graph neural network with self-attention and multi-task learning for credit default risk prediction LI, Zihao WANG, Xianzhi YAO, Lina CHEN, Yakun XU, Guandong LIM, Ee-peng We propose a graph neural network with self-attention and multi-task learning (SaM-GNN) to leverage the advantages of deep learning for credit default risk prediction. Our approach incorporates two parallel tasks based on shared intermediate vectors for input vector reconstruction and credit default risk prediction, respectively. To better leverage supervised data, we use self-attention layers for feature representation of categorical and numeric data; we further link raw data into a graph and use a graph convolution module to aggregate similar information and cope with missing values during constructing intermediate vectors. Our method does not heavily rely on feature engineering work and the experiments show our approach outperforms several types of baseline methods; the intermediate vector obtained by our approach also helps improve the performance of ensemble learning methods. 2022-11-01T07:00:00Z text https://ink.library.smu.edu.sg/sis_research/7515 info:doi/10.1007/978-3-031-20891-1_44 https://doi.org/10.1007/978-3-031-20891-1_44 Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Credit default risk prediction Graph neural network Self-attention Multi-task learning Databases and Information Systems Graphics and Human Computer Interfaces Numerical Analysis and Scientific Computing |
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Credit default risk prediction Graph neural network Self-attention Multi-task learning Databases and Information Systems Graphics and Human Computer Interfaces Numerical Analysis and Scientific Computing LI, Zihao WANG, Xianzhi YAO, Lina CHEN, Yakun XU, Guandong LIM, Ee-peng Graph neural network with self-attention and multi-task learning for credit default risk prediction |
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We propose a graph neural network with self-attention and multi-task learning (SaM-GNN) to leverage the advantages of deep learning for credit default risk prediction. Our approach incorporates two parallel tasks based on shared intermediate vectors for input vector reconstruction and credit default risk prediction, respectively. To better leverage supervised data, we use self-attention layers for feature representation of categorical and numeric data; we further link raw data into a graph and use a graph convolution module to aggregate similar information and cope with missing values during constructing intermediate vectors. Our method does not heavily rely on feature engineering work and the experiments show our approach outperforms several types of baseline methods; the intermediate vector obtained by our approach also helps improve the performance of ensemble learning methods. |
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LI, Zihao WANG, Xianzhi YAO, Lina CHEN, Yakun XU, Guandong LIM, Ee-peng |
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LI, Zihao WANG, Xianzhi YAO, Lina CHEN, Yakun XU, Guandong LIM, Ee-peng |
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LI, Zihao |
title |
Graph neural network with self-attention and multi-task learning for credit default risk prediction |
title_short |
Graph neural network with self-attention and multi-task learning for credit default risk prediction |
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Graph neural network with self-attention and multi-task learning for credit default risk prediction |
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Graph neural network with self-attention and multi-task learning for credit default risk prediction |
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Graph neural network with self-attention and multi-task learning for credit default risk prediction |
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graph neural network with self-attention and multi-task learning for credit default risk prediction |
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Institutional Knowledge at Singapore Management University |
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2022 |
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https://ink.library.smu.edu.sg/sis_research/7515 https://doi.org/10.1007/978-3-031-20891-1_44 |
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