Credit scoring is without a doubt one of the oldest applications of analytics. In recent years, a multitude of sophisticated classification techniques have been developed to improve the statistical performance of credit scoring models. Instead of focusing on the techniques themselves, this paper leverages alternative data sources to enhance both statistical and economic model performance. The study demonstrates how including call networks, in the context of positive credit information, as a new Big Data source has added value in terms of profit by applying a profit measure and profit-based feature selection. A unique combination of datasets, including call-detail records, credit and debit account information of customers is used to create s...
This volume is comprised of research papers from the International Conference on Recent Advancements...
For most Americans, access to credit is an essential requirement for upward mobility and financial s...
This paper presents a comprehensive review of the works done, during the 2000–2012, in the applicati...
© 2018 Elsevier B.V. Credit scoring is without a doubt one of the oldest applications of analytics. ...
Motivated by the growing practice of using social network data in credit scoring, we analyze the imp...
PurposeThis paper aims to survey the credit scoring literature in the past 41 years (1976-2017) and ...
Credit scoring model have been developed by banks and researchers to improve the process of assessin...
Abstract. Credit is a widely used tool to finance personal and corpo-rate projects. The risk of defa...
In the rapidly growing world of data science and analytics, data has become an asset that gives comp...
Credit scoring has evolved into a critical tool for assessing risk in consumer lending. This thesis ...
Traditionally, in credit scoring, people’s banking history is analyzed to assess their creditworth...
<div><p>An ability to understand and predict financial wellbeing for individuals is of interest to e...
Tremendous growth in the credit industry has spurred the need for Credit Scoring and Its Application...
Over the last couple of years, we have seen much advancement in mathematical analysis and computatio...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
This volume is comprised of research papers from the International Conference on Recent Advancements...
For most Americans, access to credit is an essential requirement for upward mobility and financial s...
This paper presents a comprehensive review of the works done, during the 2000–2012, in the applicati...
© 2018 Elsevier B.V. Credit scoring is without a doubt one of the oldest applications of analytics. ...
Motivated by the growing practice of using social network data in credit scoring, we analyze the imp...
PurposeThis paper aims to survey the credit scoring literature in the past 41 years (1976-2017) and ...
Credit scoring model have been developed by banks and researchers to improve the process of assessin...
Abstract. Credit is a widely used tool to finance personal and corpo-rate projects. The risk of defa...
In the rapidly growing world of data science and analytics, data has become an asset that gives comp...
Credit scoring has evolved into a critical tool for assessing risk in consumer lending. This thesis ...
Traditionally, in credit scoring, people’s banking history is analyzed to assess their creditworth...
<div><p>An ability to understand and predict financial wellbeing for individuals is of interest to e...
Tremendous growth in the credit industry has spurred the need for Credit Scoring and Its Application...
Over the last couple of years, we have seen much advancement in mathematical analysis and computatio...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
This volume is comprised of research papers from the International Conference on Recent Advancements...
For most Americans, access to credit is an essential requirement for upward mobility and financial s...
This paper presents a comprehensive review of the works done, during the 2000–2012, in the applicati...