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A ResNet-LSTM Based Credit Scoring Approach for Imbalanced Data
2022
Mobile Information Systems
Detecting potential defaults or bad debt with limited information has become a huge challenge. The main difficulties faced by the credit scoring are sample imbalance and poor classification performance. For this reason, we first proposed the auxiliary conditional tabular generative adversarial network (ACTGAN) to generate sufficient default transaction samples from the original data, then we designed a model based on ResNet-LSTM used for feature extraction, which includes two submodels of
doi:10.1155/2022/9103437
doaj:ec4bef1c9d424e9cb5c9d612bc67bf99
fatcat:maixroxbabfmvfdbzwiyvl22wy