Using deep learning to interpolate the missing data in time-series for credit risks along supply chain
| Year of publication: |
2023
|
|---|---|
| Authors: | Zhang, Wenfeng ; Lim, Ming Kim ; Yang, Mei ; Li, Xingzhi ; Ni, Du |
| Published in: |
Industrial Management & Data Systems. - Emerald Publishing Limited, ISSN 1758-5783, ZDB-ID 2002327-3. - Vol. 123.2023, 5, p. 1401-1417
|
| Publisher: |
Emerald Publishing Limited |
| Subject: | Deep learning | Credit risk prediction | Interpolation | Missing data in irregular time-series | Supply chain |
-
Wang, Weiqing, (2025)
-
Credit risk prediction of SMEs in supply chain finance by fusing demographic and behavioral data
Zhang, Wen, (2022)
-
Demand forecasting in supply chain management using different deep learning methods
Husna, Asma, (2021)
- More ...
-
Monitoring corporate credit risk with multiple data sources
Ni, Du, (2022)
-
A green vehicle routing model based on modified particle swarm optimization for cold chain logistics
Li, Yan, (2019)
-
A novel method for green delivery mode considering shared vehicles in the IoT environment
Lim, Ming Kim, (2020)
- More ...