Theoretical Economics Letters

Theoretical Economics Letters

ISSN Print: 2162-2078
ISSN Online: 2162-2086
www.scirp.org/journal/tel
E-mail: tel@scirp.org
"A Study on Forecasting the Default Risk of Bond Based on XGboost Algorithm and Over-Sampling Method"
written by Yan Zhang, Lin Chen,
published by Theoretical Economics Letters, Vol.11 No.2, 2021
has been cited by the following article(s):
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