Feature-Level Fusion of Super-App and Telecommunication Alternative Data
Sources for Credit Card Fraud Detection
- URL: http://arxiv.org/abs/2111.03707v1
- Date: Fri, 5 Nov 2021 19:10:35 GMT
- Title: Feature-Level Fusion of Super-App and Telecommunication Alternative Data
Sources for Credit Card Fraud Detection
- Authors: Jaime D. Acevedo-Viloria, Sebasti\'an Soriano P\'erez, Jesus Solano,
David Zarruk-Valencia, Fernando G. Paulin, Alejandro Correa-Bahnsen
- Abstract summary: We review the effectiveness of a feature-level fusion of super-app customer information, mobile phone line data, and traditional credit risk variables for the early detection of identity theft credit card fraud.
We evaluate our approach over approximately 90,000 users from a credit lender's digital platform database.
- Score: 106.33204064461802
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Identity theft is a major problem for credit lenders when there's not enough
data to corroborate a customer's identity. Among super-apps large digital
platforms that encompass many different services this problem is even more
relevant; losing a client in one branch can often mean losing them in other
services. In this paper, we review the effectiveness of a feature-level fusion
of super-app customer information, mobile phone line data, and traditional
credit risk variables for the early detection of identity theft credit card
fraud. Through the proposed framework, we achieved better performance when
using a model whose input is a fusion of alternative data and traditional
credit bureau data, achieving a ROC AUC score of 0.81. We evaluate our approach
over approximately 90,000 users from a credit lender's digital platform
database. The evaluation was performed using not only traditional ML metrics
but the financial costs as well.
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