Examining Selected Theoretical Distributions of Life Expectancy to Analyse Customer Loyalty Durability. The Case of a European Retail Bank

One of the key elements related to calculating Customer Lifetime Value is to estimate the duration of a client’s relationship with a bank in the future. This can be done using survival analysis. The aim of the article is to examine which of the known distributions used in survival analysis (Weibull,...

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Main Authors: Dominik Kubacki, Robert Kubacki
Format: Article
Language:English
Published: Lodz University Press 2020-11-01
Series:Acta Universitatis Lodziensis. Folia Oeconomica
Subjects:
Online Access:https://czasopisma.uni.lodz.pl/foe/article/view/4617
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spelling doaj-f6977111e37541df8f075d635d77bad22021-03-04T14:01:45ZengLodz University PressActa Universitatis Lodziensis. Folia Oeconomica0208-60182353-76632020-11-014349819210.18778/0208-6018.349.054014Examining Selected Theoretical Distributions of Life Expectancy to Analyse Customer Loyalty Durability. The Case of a European Retail BankDominik Kubacki0Robert KubackiUniversity of Łódź, Faculty of Economics and Sociology, Department of BankingOne of the key elements related to calculating Customer Lifetime Value is to estimate the duration of a client’s relationship with a bank in the future. This can be done using survival analysis. The aim of the article is to examine which of the known distributions used in survival analysis (Weibull, Exponential, Gamma, Log‑normal) best describes the churn phenomenon of a bank’s clients. If the aim is to estimate the distribution according to which certain units (bank customers) survive and the factors that cause this are not so important, then parametric models can be used. Estimation of survival function parameters is faster than estimating a full Cox model with a properly selected set of explanatory variables. The authors used censored data from a retail bank for the study. The article also draws attention to the most common problems related to preparing data for survival analysis.https://czasopisma.uni.lodz.pl/foe/article/view/4617survival analysiscustomer lifetime valuebankingparametric modelskaplan–meier estimator
collection DOAJ
language English
format Article
sources DOAJ
author Dominik Kubacki
Robert Kubacki
spellingShingle Dominik Kubacki
Robert Kubacki
Examining Selected Theoretical Distributions of Life Expectancy to Analyse Customer Loyalty Durability. The Case of a European Retail Bank
Acta Universitatis Lodziensis. Folia Oeconomica
survival analysis
customer lifetime value
banking
parametric models
kaplan–meier estimator
author_facet Dominik Kubacki
Robert Kubacki
author_sort Dominik Kubacki
title Examining Selected Theoretical Distributions of Life Expectancy to Analyse Customer Loyalty Durability. The Case of a European Retail Bank
title_short Examining Selected Theoretical Distributions of Life Expectancy to Analyse Customer Loyalty Durability. The Case of a European Retail Bank
title_full Examining Selected Theoretical Distributions of Life Expectancy to Analyse Customer Loyalty Durability. The Case of a European Retail Bank
title_fullStr Examining Selected Theoretical Distributions of Life Expectancy to Analyse Customer Loyalty Durability. The Case of a European Retail Bank
title_full_unstemmed Examining Selected Theoretical Distributions of Life Expectancy to Analyse Customer Loyalty Durability. The Case of a European Retail Bank
title_sort examining selected theoretical distributions of life expectancy to analyse customer loyalty durability. the case of a european retail bank
publisher Lodz University Press
series Acta Universitatis Lodziensis. Folia Oeconomica
issn 0208-6018
2353-7663
publishDate 2020-11-01
description One of the key elements related to calculating Customer Lifetime Value is to estimate the duration of a client’s relationship with a bank in the future. This can be done using survival analysis. The aim of the article is to examine which of the known distributions used in survival analysis (Weibull, Exponential, Gamma, Log‑normal) best describes the churn phenomenon of a bank’s clients. If the aim is to estimate the distribution according to which certain units (bank customers) survive and the factors that cause this are not so important, then parametric models can be used. Estimation of survival function parameters is faster than estimating a full Cox model with a properly selected set of explanatory variables. The authors used censored data from a retail bank for the study. The article also draws attention to the most common problems related to preparing data for survival analysis.
topic survival analysis
customer lifetime value
banking
parametric models
kaplan–meier estimator
url https://czasopisma.uni.lodz.pl/foe/article/view/4617
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AT robertkubacki examiningselectedtheoreticaldistributionsoflifeexpectancytoanalysecustomerloyaltydurabilitythecaseofaeuropeanretailbank
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