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Credit scoring for profitability objectives

Research output: Working paper

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Credit scoring for profitability objectives. / Finlay, S M.
Lancaster University: The Department of Management Science, 2008. (Management Science Working Paper Series).

Research output: Working paper

Harvard

Finlay, SM 2008 'Credit scoring for profitability objectives' Management Science Working Paper Series, The Department of Management Science, Lancaster University.

APA

Finlay, S. M. (2008). Credit scoring for profitability objectives. (Management Science Working Paper Series). The Department of Management Science.

Vancouver

Finlay SM. Credit scoring for profitability objectives. Lancaster University: The Department of Management Science. 2008. (Management Science Working Paper Series).

Author

Finlay, S M. / Credit scoring for profitability objectives. Lancaster University : The Department of Management Science, 2008. (Management Science Working Paper Series).

Bibtex

@techreport{3e262ad3c4fd4b82b9855275d4506a05,
title = "Credit scoring for profitability objectives",
abstract = "In consumer credit markets lending decisions are usually represented as a set of classification problems. The objective is to predict the likelihood of customers ending up in one of a finite number of states, such as good/bad payer, responder/non-responder and transactor/non-transactor. Decision rules are then applied on the basis of the resulting model estimates. However, this represents a misspecification of the true objectives of commercial lenders, which are better described in terms of continuous financial measures such as bad debt, revenue and profit contribution. In this paper an empirical study is undertaken to compare predictive models of continuous financial behaviour with binary models of customer default. The results show models of continuous financial behaviour to outperform classification approaches. They also demonstrate that scoring functions developed to specifically optimize profit contribution, using genetic algorithms, outperform scoring functions derived from optimizing more general functions such as sum of squared error.",
keywords = "OR in banking, Credit scoring, Genetic algorithms, Profitability",
author = "Finlay, {S M}",
year = "2008",
language = "English",
series = "Management Science Working Paper Series",
publisher = "The Department of Management Science",
type = "WorkingPaper",
institution = "The Department of Management Science",

}

RIS

TY - UNPB

T1 - Credit scoring for profitability objectives

AU - Finlay, S M

PY - 2008

Y1 - 2008

N2 - In consumer credit markets lending decisions are usually represented as a set of classification problems. The objective is to predict the likelihood of customers ending up in one of a finite number of states, such as good/bad payer, responder/non-responder and transactor/non-transactor. Decision rules are then applied on the basis of the resulting model estimates. However, this represents a misspecification of the true objectives of commercial lenders, which are better described in terms of continuous financial measures such as bad debt, revenue and profit contribution. In this paper an empirical study is undertaken to compare predictive models of continuous financial behaviour with binary models of customer default. The results show models of continuous financial behaviour to outperform classification approaches. They also demonstrate that scoring functions developed to specifically optimize profit contribution, using genetic algorithms, outperform scoring functions derived from optimizing more general functions such as sum of squared error.

AB - In consumer credit markets lending decisions are usually represented as a set of classification problems. The objective is to predict the likelihood of customers ending up in one of a finite number of states, such as good/bad payer, responder/non-responder and transactor/non-transactor. Decision rules are then applied on the basis of the resulting model estimates. However, this represents a misspecification of the true objectives of commercial lenders, which are better described in terms of continuous financial measures such as bad debt, revenue and profit contribution. In this paper an empirical study is undertaken to compare predictive models of continuous financial behaviour with binary models of customer default. The results show models of continuous financial behaviour to outperform classification approaches. They also demonstrate that scoring functions developed to specifically optimize profit contribution, using genetic algorithms, outperform scoring functions derived from optimizing more general functions such as sum of squared error.

KW - OR in banking

KW - Credit scoring

KW - Genetic algorithms

KW - Profitability

M3 - Working paper

T3 - Management Science Working Paper Series

BT - Credit scoring for profitability objectives

PB - The Department of Management Science

CY - Lancaster University

ER -