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Lee, Yongjae
Financial Engineering Lab.
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Identifying household finance heterogeneity via deep clustering

Author(s)
Hwang, YoontaeLee, YongjaeFabozzi, Frank J.
Issued Date
2023-06
DOI
10.1007/s10479-022-04900-3
URI
https://scholarworks.unist.ac.kr/handle/201301/59533
Citation
ANNALS OF OPERATIONS RESEARCH, v.325, no.2, pp.1255 - 1289
Abstract
Households are becoming increasingly heterogeneous. While previous studies have revealed many important insights (e.g., wealth effect, income effect), they could only incorporate two or three variables at a time. However, in order to have a more detailed understanding of complex household heterogeneity, more variables should be considered simultaneously. In this study, we argue that advanced clustering techniques can be useful for investigating high-dimensional household heterogeneity. A deep learning-based clustering method is used to effectively handle the high-dimensional balance sheet data of approximately 50,000 households. The employment of appropriate dimension-reduction techniques is the key to incorporate the full joint distribution of high-dimensional data in the clustering step. Our study suggests that various variables should be used together to explain household heterogeneity. Asset variables are found to be crucial for understanding heterogeneity within wealthy households, while debt variables are more important for those households that are not wealthy. In addition, relationships with sociodemographic variables (e.g., age, education, and family size) were further analyzed. Although clusters are found only based on financial variables, they are shown to be closely related to most sociodemographic variables.
Publisher
Kluwer Academic Publishers
ISSN
0254-5330
Keyword (Author)
Household financeHeterogeneous householdHigh-dimensional dataClusteringMachine learningDeep learning
Keyword
INEQUALITYDECOMPOSITIONCONSUMPTION

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