TITLE

DUE DILIGENCE THAT EVOLVES WITH CLIENTS

AUTHOR(S)
Adams, John
PUB. DATE
April 2007
SOURCE
Bank Technology News;Apr2007, Vol. 20 Issue 4, p26
SOURCE TYPE
Trade Publication
DOC. TYPE
Article
ABSTRACT
The article reports on the use of data mining to assess customer risk and to track the risk over time. BB&T and Fortis are implementing business intelligence technology to better track the credit and security risk profiles of their clients to control costs and losses and deploy capital more intelligently.
ACCESSION #
24688115

 

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