Traditionally most cross-selling models in retail banking use demographics information and interactions with marketing as input to statistical models or machine learning algorithms to predict whether a customer is willing to purchase a given financial product or not. We overcome with such limitation by building several models that also use several years of account transaction data. The objective of this study is to analysis credit card transactions of customers, in order to come up with a good prediction in cross-selling products. We use deep-learning algorithm to analyze almost 800,000 credit cards transactions. The results show that such unique data contains valuable information on the customers’ consumption behavior and it can significan...
The aim of this article is to present a case study of usage of one of the data mining methods, neura...
Consumer purchase behaviour has become a potential research area in business analytics, as exploring...
Uses for machine learning methods have dramatically increased over the last decade. With a diverse a...
Traditionally most cross-selling models in retail banking use demographics information and interacti...
This master thesis seeks to explore how machine learning methods can be applied to predict the custo...
Evaluating transactional payment behaviour offers a competitive advantage in the modern payment ecos...
The paper examines the potential of deep learning to support decisions in financial risk management....
Nowadays, many businesses are resorting to data mining techniques on their data, to save costs and t...
Over the last couple of years, we have seen much advancement in mathematical analysis and computatio...
Banking advertisements are important because they help target specific customers on subscribing to t...
Banks need to develop effective credit scoring models to better understand the relationship between ...
One of the tasks of banking marketing is to analyze customers' data and to find out the potential cu...
The aim of this article is to present perdition and risk accuracy analysis of default customer in th...
Danske Bank has for several years modeled customer purchase behavior on category level (e.g. savings...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
The aim of this article is to present a case study of usage of one of the data mining methods, neura...
Consumer purchase behaviour has become a potential research area in business analytics, as exploring...
Uses for machine learning methods have dramatically increased over the last decade. With a diverse a...
Traditionally most cross-selling models in retail banking use demographics information and interacti...
This master thesis seeks to explore how machine learning methods can be applied to predict the custo...
Evaluating transactional payment behaviour offers a competitive advantage in the modern payment ecos...
The paper examines the potential of deep learning to support decisions in financial risk management....
Nowadays, many businesses are resorting to data mining techniques on their data, to save costs and t...
Over the last couple of years, we have seen much advancement in mathematical analysis and computatio...
Banking advertisements are important because they help target specific customers on subscribing to t...
Banks need to develop effective credit scoring models to better understand the relationship between ...
One of the tasks of banking marketing is to analyze customers' data and to find out the potential cu...
The aim of this article is to present perdition and risk accuracy analysis of default customer in th...
Danske Bank has for several years modeled customer purchase behavior on category level (e.g. savings...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
The aim of this article is to present a case study of usage of one of the data mining methods, neura...
Consumer purchase behaviour has become a potential research area in business analytics, as exploring...
Uses for machine learning methods have dramatically increased over the last decade. With a diverse a...