1,519 research outputs found

    Consumer finance: challenges for operational research

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    Consumer finance has become one of the most important areas of banking, both because of the amount of money being lent and the impact of such credit on global economy and the realisation that the credit crunch of 2008 was partly due to incorrect modelling of the risks in such lending. This paper reviews the development of credit scoring—the way of assessing risk in consumer finance—and what is meant by a credit score. It then outlines 10 challenges for Operational Research to support modelling in consumer finance. Some of these involve developing more robust risk assessment systems, whereas others are to expand the use of such modelling to deal with the current objectives of lenders and the new decisions they have to make in consumer finance. <br/

    Operations research in consumer finance: challenges for operational research

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    Consumer finance has become one of the most important areas of banking both because of the amount of money being lent and the impact of such credit on the global economy and the realisation that the credit crunch of 2008 was partly due to incorrect modelling of the risks in such lending. This paper reviews the development of credit scoring,-the way of assessing risk in consumer finance- and what is meant by a credit score. It then outlines ten challenges for Operational Research to support modelling in consumer finance. Some of these are to developing more robust risk assessment systems while others are to expand the use of such modelling to deal with the current objectives of lenders and the new decisions they have to make in consumer financ

    Benefits of relationship banking: evidence from consumer credit markets

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    This paper empirically examines the benefits of relationship banking to banks, in the context of consumer credit markets. Using a unique panel dataset that contains comprehensive information about the relationships between a large bank and its credit card customers, we estimate the effects of relationship banking on the customers' default, attrition, and utilization behavior. We find that relationship accounts exhibit lower probabilities of default and attrition, and have higher utilization rates, compared to non-relationship accounts, ceteris paribus. Such effects become more pronounced with increases in various measures of the strength of the relationships, such as relationship breadth, depth, length, and proximity. Moreover, dynamic information about changes in the behavior of a customer’s other accounts at the bank, such as changes in checking and savings balances, helps predict and thus monitor the behavior of the credit card account over time. These results imply significant potential benefits of relationship banking to banks in the retail credit market.Consumer credit ; Credit cards

    Forecasting credit card attrition using machine learning models

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    Este trabajo tiene como objetivo el estudio, aplicación e implementación de modelos Machine Learning para identificar qué clientes desean cancelar alguna de sus tarjetas de crédito. La industria bancaria utiliza esta tecnología con el fin de obtener predicciones más fiables a la hora de identificar oportunidades de compra, inversión o fraude. Estos modelos se pueden adaptar de forma independiente, por medio del reconocimiento de patrones y algoritmos basados en cálculos matemáticos. Para desarrollar la investigación se implementaron y evaluaron cuatro modelos (LightGBM, XGBoost, Random Forest y Logistic Regression) con el fin de predecir a través de los datos del cliente y sus productos la posibilidad de que cancele sus tarjetas de crédito. Mediante una análisis de la curvas ROC usando las métricas AUC, se llegó a la conclusión que de los modelos seleccionados, el modelo elegido para realizar la predicción fue LightGBM, ya que fue el que tuvo mejor desempeño en los experimentos realizados. De igual forma, se encontró que la variable Score Acierta, una calificación del cliente proveída por la central de riesgos, es la que más discrimina en los modelos predicción.The objective of this work is the implementation and evaluation of Machine Learning models to identify which customers want to cancel their credit cards. The banking industry uses this technology to obtain more reliable predictions when identifying opportunities for purchase, investment, or fraud. These models can be adapted independently, by recognizing patterns and algorithms based on mathematical calculations. Four models (LightGBM, XGBoost, Random Forest and Logistic Regression) were implemented and evaluated to predict, using data about customers and products held pertaining to a bank in Colombia, the likelihood of customers cancelling their credit cards. By analysing the ROC curves using the AUC metric, it is concluded that, of the selected models, the model chosen for deployment would be LightGBM, since it was the one that performed best in the experiments conducted. Furthermore, the ``Score Acierta'' variable, a customer rating provided by the Colombian credit rating agency, was found to be the most discriminating in prediction models

    Estimating a customer churn model in the ADSL industry in Portugal: The use of a Semi-Markov model

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    Customer churn has been stated as one of the main reasons of profitability losses in the telecommunications industry. As such, it seems critical to have an a priori knowledge about the risk of a given customer to churn at any moment, in order to take preventive measures to avoid the defection of potentially profitable customers. This study intends to develop a duration model of the residential customer churn in this industry in Portugal. We found empirical evidence that the variables that influence customer churn are the total number of overdue bills since ever, average monthly spending, average value of additional internet traffic, payment method, equipment renting, and the subscription of a flat plan. We also found that the probability of a customer to churn is neither constant over time nor across customers.info:eu-repo/semantics/publishedVersio

    Detecting customer defections: an application of continuous duration models

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    The considerable increase of business competition in the Portuguese fixed telecommunications industry for the last decades has given rise to a phenomenon of customer defection, which has serious consequences for the business financial performance and, therefore, for the economy. As such, researchers have recognised the importance of an in-depth study of customer defection in different industries and geographic locations. This study aims to understand and predict customer lifetime in a contractual setting in order to improve the practice of customer portfolio management. A duration model is developed to understand and predict the residential customer defection in the fixed telecommunications industry in Portugal. The models are developed by using large-scale data from an internal database of a Portuguese company which presents bundled offers of ADSL, fixed line telephone, pay-TV and home-video. The model is estimated with a large number of covariates, which includes customer’s basic information, demographics, churn flag, customer historical information about usage, billing, subscription, credit, and other. The results of this study are very useful to the computation of the customer lifetime value

    Hybrid Random Forest Survival Model to Predict Customer Membership Dropout

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    Dropout prediction is a problem that must be addressed in various organizations, as retaining customers is generally more profitable than attracting them. Existing approaches address the problem considering a dependent variable representing dropout or non-dropout, without considering the dynamic perspetive that the dropout risk changes over time. To solve this problem, we explore the use of random survival forests combined with clusters, in order to evaluate whether the prediction performance improves. The model performance was determined using the concordance probability, Brier Score and the error in the prediction considering 5200 customers of a Health Club. Our results show that the prediction performance in the survival models increased substantially in the models using clusters rather than that without clusters, with a statistically significant difference between the models. The model using a hybrid approach improved the accuracy of the survival model, providing support to develop countermeasures considering the period in which dropout is likely to occur.info:eu-repo/semantics/publishedVersio

    Hybrid Random Forest Survival Model to Predict Customer Membership Dropout

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    Dropout prediction is a problem that must be addressed in various organizations, as retaining customers is generally more profitable than attracting them. Existing approaches address the problem considering a dependent variable representing dropout or non-dropout, without considering the dynamic perspetive that the dropout risk changes over time. To solve this problem, we explore the use of random survival forests combined with clusters, in order to evaluate whether the prediction performance improves. The model performance was determined using the concordance probability, Brier Score and the error in the prediction considering 5200 customers of a Health Club. Our results show that the prediction performance in the survival models increased substantially in the models using clusters rather than that without clusters, with a statistically significant difference between the models. The model using a hybrid approach improved the accuracy of the survival model, providing support to develop countermeasures considering the period in which dropout is likely to occur.info:eu-repo/semantics/publishedVersio

    Improving customer churn prediction by data augmentation using pictorial stimulus-choice data

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    The purpose of this paper is to determine the added value of pictorial stimulus-choice data in customer churn prediction. Using Random Forests and 5 times 2 fold cross-validation, this study analyzes how much pictorial stimulus choice data and survey data increase the AUC of a churn model over and above administrative, operational and complaints data. The finding is that pictorial-stimulus choice data significantly increases AUC of models with administrative and operational data. The practical implication of this finding is that companies should start considering mining pictorial data from social media sites (e.g. Pinterest), in order to augment their internal customer database. This study is original in that it is the first that assesses the added value of pictorial stimulus-choice data in predictive models. This is important because more and more social media websites are focusing on pictures
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