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Scoring Bank Loans that may go wrong: A Case Study
Authors
J.S. Cramer
Publication date
1 January 2000
Publisher
Amsterdam and Rotterdam: Tinbergen Institute
Abstract
A bank employs logistic regression with state-dependent sample selection to identify loans thatmay go wrong. Inspection shows that the logit model is inappropriate. A bounded logit model witha ceiling of (far) less than 1 fits the data much better
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EconStor (ZBW Kiel)
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Last time updated on 14/06/2016