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Social network analytics in micro-lending

Social network analytics in micro-lending
Social network analytics in micro-lending
Traditionally, in credit scoring, people’s banking history is analyzed to assess their creditworthiness and to determine their reliability when paying back their loans. However, as data is continuously being generated in more volume and variety than ever before, there is foundation for new credit assessment approaches, in particular by incorporating new variables to capture borrower behavior going beyond simple repayment history. Specifically, variables that describe people’s behavior have been shown to be good predictors of creditworthiness. In industry, this is being utilized by the means of smartphone applications, which facilitate micro-lending. These applications analyze the data generated when the phone is used to decide whether the person should be
granted a loan. The impact of these platforms is especially important in developing countries where large portions of the population do not have any banking history, and therefore no means of receiving a loan in the traditional way. In this study, we apply social network analytics techniques to analyze a micro-lending smartphone application dataset. We build networks in various ways to capture different components of social interaction and similarity among users. These networks are then used and featurized for building scorecards and to determine which network effects are most predictive of creditworthiness. Furthermore, we discuss how the data can be utilized for fraud detection and product adoption.
Óskarsdóttir, María
1622b6dd-5d25-4228-9418-a1729e9577e0
Bravo, Cristian
b22c4145-644e-40ee-85d8-431c59c3c71b
Vanathien, Jan
6f422b84-1d59-4d0d-89cc-d0cc25540022
Baesens, Bart
f7c6496b-aa7f-4026-8616-ca61d9e216f0
Óskarsdóttir, María
1622b6dd-5d25-4228-9418-a1729e9577e0
Bravo, Cristian
b22c4145-644e-40ee-85d8-431c59c3c71b
Vanathien, Jan
6f422b84-1d59-4d0d-89cc-d0cc25540022
Baesens, Bart
f7c6496b-aa7f-4026-8616-ca61d9e216f0

Óskarsdóttir, María, Bravo, Cristian, Vanathien, Jan and Baesens, Bart (2018) Social network analytics in micro-lending. 29th European Conference on Operational Research, , Valencia, Spain. 08 - 11 Jul 2018. 1 pp .

Record type: Conference or Workshop Item (Other)

Abstract

Traditionally, in credit scoring, people’s banking history is analyzed to assess their creditworthiness and to determine their reliability when paying back their loans. However, as data is continuously being generated in more volume and variety than ever before, there is foundation for new credit assessment approaches, in particular by incorporating new variables to capture borrower behavior going beyond simple repayment history. Specifically, variables that describe people’s behavior have been shown to be good predictors of creditworthiness. In industry, this is being utilized by the means of smartphone applications, which facilitate micro-lending. These applications analyze the data generated when the phone is used to decide whether the person should be
granted a loan. The impact of these platforms is especially important in developing countries where large portions of the population do not have any banking history, and therefore no means of receiving a loan in the traditional way. In this study, we apply social network analytics techniques to analyze a micro-lending smartphone application dataset. We build networks in various ways to capture different components of social interaction and similarity among users. These networks are then used and featurized for building scorecards and to determine which network effects are most predictive of creditworthiness. Furthermore, we discuss how the data can be utilized for fraud detection and product adoption.

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More information

Published date: 8 July 2018
Venue - Dates: 29th European Conference on Operational Research, , Valencia, Spain, 2018-07-08 - 2018-07-11

Identifiers

Local EPrints ID: 422709
URI: http://eprints.soton.ac.uk/id/eprint/422709
PURE UUID: 76adbe5b-150b-4bc2-a82f-26a0f3aa8902
ORCID for Cristian Bravo: ORCID iD orcid.org/0000-0003-1579-1565
ORCID for Bart Baesens: ORCID iD orcid.org/0000-0002-5831-5668

Catalogue record

Date deposited: 31 Jul 2018 16:30
Last modified: 16 Mar 2024 04:00

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Contributors

Author: María Óskarsdóttir
Author: Cristian Bravo ORCID iD
Author: Jan Vanathien
Author: Bart Baesens ORCID iD

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