Introduction of Credit Scores and Subprime Lending in Minority Neighborhoods

2021 ◽  
Author(s):  
Egle Jakucionyte ◽  
Swapnil Singh
Author(s):  
Susan M. Wachter ◽  
Karl Russo ◽  
Jonathan E. Hershaff
Keyword(s):  

Author(s):  
Igor Makarov ◽  
Guillaume Plantin
Keyword(s):  

2021 ◽  
pp. 001312452110638
Author(s):  
Lindsay Neuberger ◽  
Deborah A. Carroll ◽  
Silvana Bastante ◽  
Maeven Rogers ◽  
Laura Boutemen

Financial illiteracy is a systemic issue across the country, especially among lower-income individuals in urban communities. This low level of financial literacy often leads to higher levels of debt, lower credit scores, less wealth accumulation, and poor retirement planning. Increasing financial literacy in these priority populations can be effective in combatting some of these negative financial outcomes. This study emerged from a partnership between community organizations in a large urban metropolitan area and scholars from diverse disciplinary backgrounds. Guided by formative research principles, this manuscript reports on research findings derived from several focus groups with community members. These focus groups helped to identify existing perceived financial knowledge levels, categorize barriers to enhancing financial literacy, and illuminate potentially pathways to effective financial literacy program development.


2021 ◽  
Vol ahead-of-print (ahead-of-print) ◽  
Author(s):  
Hongming Gao ◽  
Hongwei Liu ◽  
Haiying Ma ◽  
Cunjun Ye ◽  
Mingjun Zhan

PurposeA good decision support system for credit scoring enables telecom operators to measure the subscribers' creditworthiness in a fine-grained manner. This paper aims to propose a robust credit scoring system by leveraging latent information embedded in the telecom subscriber relation network based on multi-source data sources, including telecom inner data, online app usage, and offline consumption footprint.Design/methodology/approachRooting from network science, the relation network model and singular value decomposition are integrated to infer different subscriber subgroups. Employing the results of network inference, the paper proposed a network-aware credit scoring system to predict the continuous credit scores by implementing several state-of-art techniques, i.e. multivariate linear regression, random forest regression, support vector regression, multilayer perceptron, and a deep learning algorithm. The authors use a data set consisting of 926 users of a Chinese major telecom operator within one month of 2018 to verify the proposed approach.FindingsThe distribution of telecom subscriber relation network follows a power-law function instead of the Gaussian function previously thought. This network-aware inference divides the subscriber population into a connected subgroup and a discrete subgroup. Besides, the findings demonstrate that the network-aware decision support system achieves better and more accurate prediction performance. In particular, the results show that our approach considering stochastic equivalence reveals that the forecasting error of the connected-subgroup model is significantly reduced by 7.89–25.64% as compared to the benchmark. Deep learning performs the best which might indicate that a non-linear relationship exists between telecom subscribers' credit scores and their multi-channel behaviours.Originality/valueThis paper contributes to the existing literature on business intelligence analytics and continuous credit scoring by incorporating latent information of the relation network and external information from multi-source data (e.g. online app usage and offline consumption footprint). Also, the authors have proposed a power-law distribution-based network-aware decision support system to reinforce the prediction performance of individual telecom subscribers' credit scoring for the telecom marketing domain.


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