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Household financial health: a machine learning approach for data-driven diagnosis and prescription

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Listed:
  • Kyeongbin Kim
  • Yoontae Hwang
  • Dongcheol Lim
  • Suhyeon Kim
  • Junghye Lee
  • Yongjae Lee

Abstract

Household finances are being threatened by unprecedented social and economic upheavals, including an aging society and slow economic growth. Numerous researchers and practitioners have provided guidelines for improving the financial status of households; however, the challenge of handling heterogeneous households remains nontrivial. In this study, we propose a new data-driven framework for the financial health of households to address the needs for diagnosing and improving financial health. This research extends the concept of healthcare to household finance. We develop a novel deep learning-based diagnostic model for estimating household financial health risk scores from real-world household balance sheet data. The proposed model can successfully manage the heterogeneity of households by extracting useful latent representations of household balance sheet data while incorporating the risk information of each variable. That is, we guide the model to generate higher latent values for households with risky balance sheets. We also show that the gradient of the model can be utilized for prescribing recommendations for improving household financial health. The robustness and validity of the new framework are demonstrated using empirical analyses.

Suggested Citation

  • Kyeongbin Kim & Yoontae Hwang & Dongcheol Lim & Suhyeon Kim & Junghye Lee & Yongjae Lee, 2023. "Household financial health: a machine learning approach for data-driven diagnosis and prescription," Quantitative Finance, Taylor & Francis Journals, vol. 23(11), pages 1565-1595, November.
  • Handle: RePEc:taf:quantf:v:23:y:2023:i:11:p:1565-1595
    DOI: 10.1080/14697688.2023.2254335
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