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Bank transactions embeddings help to uncover current macroeconomics

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  • Maria Begicheva
  • Alexey Zaytsev

Abstract

Macroeconomic indexes are of high importance for banks: many risk-control decisions utilize these indexes. A typical workflow of these indexes evaluation is costly and protracted, with a lag between the actual date and available index being a couple of months. Banks predict such indexes now using autoregressive models to make decisions in a rapidly changing environment. However, autoregressive models fail in complex scenarios related to appearances of crises. We propose to use clients' financial transactions data from a large Russian bank to get such indexes. Financial transactions are long, and a number of clients is huge, so we develop an efficient approach that allows fast and accurate estimation of macroeconomic indexes based on a stream of transactions consisting of millions of transactions. The approach uses a neural networks paradigm and a smart sampling scheme. The results show that our neural network approach outperforms the baseline method on hand-crafted features based on transactions. Calculated embeddings show the correlation between the client's transaction activity and bank macroeconomic indexes over time.

Suggested Citation

  • Maria Begicheva & Alexey Zaytsev, 2021. "Bank transactions embeddings help to uncover current macroeconomics," Papers 2110.12000, arXiv.org, revised Dec 2021.
  • Handle: RePEc:arx:papers:2110.12000
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    References listed on IDEAS

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    6. Ivan Fursov & Matvey Morozov & Nina Kaploukhaya & Elizaveta Kovtun & Rodrigo Rivera-Castro & Gleb Gusev & Dmitry Babaev & Ivan Kireev & Alexey Zaytsev & Evgeny Burnaev, 2021. "Adversarial Attacks on Deep Models for Financial Transaction Records," Papers 2106.08361, arXiv.org.
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    Cited by:

    1. Alexey Zaytsev & Alex Natekin & Evgeni Vorsin & Valerii Smirnov & Georgii Smirnov & Oleg Sidorshin & Alexander Senin & Alexander Dudin & Dmitry Berestnev, 2023. "Designing an attack-defense game: how to increase robustness of financial transaction models via a competition," Papers 2308.11406, arXiv.org, revised Aug 2023.

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