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Zieba et al., 2018 - Google Patents

Beta-boosted ensemble for big credit scoring data

Zieba et al., 2018

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Document ID
1708011469428819049
Author
Zieba M
Härdle W
Publication year
Publication venue
Handbook of Big Data Analytics

External Links

Snippet

In this work we present the novel ensemble model for credit scoring problem. The main idea of the approach is to incorporate separate beta binomial distributions for each of the classes to generate balanced datasets that are further used to construct base learners that constitute …
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Classifications

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