Many communities in underdeveloped and developing economies of the world suffer from lack of access to personal credit via formal financial institutions, like banks. However, with the rapid increase in Internet and mobile phone penetration rates, firms are now trying to circumvent this problem using novel technology-enabled approaches. In this research, we leverage a real-world dataset obtained in collaboration with a microfinance firm to show that locational data from mobile phones, coupled with information about communication networks, can be effectively exploited to improve prediction of loan default rates. Specifically, we draw upon recent work in network cohesion based regression modeling to develop a model that uses locational predict...
In the rapidly growing world of data science and analytics, data has become an asset that gives comp...
The first mobile credit service in Tanzania was launched in May 2014 through a partnership between a...
The thin-file borrowers are customers for whom a creditworthiness assessment is uncertain due to the...
Traditionally, in credit scoring, people’s banking history is analyzed to assess their creditworth...
While emerging economies have seen an explosion of social network site (SNS) adoption, these countri...
Faced with growing competition in the micro financing market and higher operational risk, it is ever...
Microfinance based institutions have emerged as a potential solution to the financial exclusion prob...
In the face of increasing competition on the microfinance market and increased operational risk, i...
Access to credit by micro, small and medium enterprises is key for growth and employment. However, i...
This paper formulates an objective mathematical model for a Microfinance Institution (MFI) to measur...
Abstract. Credit is a widely used tool to finance personal and corpo-rate projects. The risk of defa...
© 2018 Elsevier B.V. Credit scoring is without a doubt one of the oldest applications of analytics. ...
Credit scoring is without a doubt one of the oldest applications of analytics. In recent years, a mu...
Emerging economies around the world are often characterized by governments and institutions struggli...
Interactions of banks with their customers are increasingly shifting to web and mobile channels. Bei...
In the rapidly growing world of data science and analytics, data has become an asset that gives comp...
The first mobile credit service in Tanzania was launched in May 2014 through a partnership between a...
The thin-file borrowers are customers for whom a creditworthiness assessment is uncertain due to the...
Traditionally, in credit scoring, people’s banking history is analyzed to assess their creditworth...
While emerging economies have seen an explosion of social network site (SNS) adoption, these countri...
Faced with growing competition in the micro financing market and higher operational risk, it is ever...
Microfinance based institutions have emerged as a potential solution to the financial exclusion prob...
In the face of increasing competition on the microfinance market and increased operational risk, i...
Access to credit by micro, small and medium enterprises is key for growth and employment. However, i...
This paper formulates an objective mathematical model for a Microfinance Institution (MFI) to measur...
Abstract. Credit is a widely used tool to finance personal and corpo-rate projects. The risk of defa...
© 2018 Elsevier B.V. Credit scoring is without a doubt one of the oldest applications of analytics. ...
Credit scoring is without a doubt one of the oldest applications of analytics. In recent years, a mu...
Emerging economies around the world are often characterized by governments and institutions struggli...
Interactions of banks with their customers are increasingly shifting to web and mobile channels. Bei...
In the rapidly growing world of data science and analytics, data has become an asset that gives comp...
The first mobile credit service in Tanzania was launched in May 2014 through a partnership between a...
The thin-file borrowers are customers for whom a creditworthiness assessment is uncertain due to the...