Synthetic Data Applications in Finance

Vamsi K. Potluru, Daniel Borrajo, Andrea Coletta, Niccolò Dalmasso, Yousef El-Laham, Elizabeth Fons, Mohsen Ghassemi, Sriram Gopalakrishnan, Vikesh Gosai, Eleonora Kreačić, Ganapathy Mani, Saheed Obitayo, Deepak Paramanand, Natraj Raman, Mikhail Solonin, Srijan Sood, Svitlana Vyetrenko, Haibei Zhu, Manuela Veloso, Tucker Balch
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Abstract

Synthetic data has made tremendous strides in various commercial settings including finance, healthcare, and virtual reality. We present a broad overview of prototypical applications of synthetic data in the financial sector and in particular provide richer details for a few select ones. These cover a wide variety of data modalities including tabular, time-series, event-series, and unstructured arising from both markets and retail financial applications. Since finance is a highly regulated industry, synthetic data is a potential approach for dealing with issues related to privacy, fairness, and explainability. Various metrics are utilized in evaluating the quality and effectiveness of our approaches in these applications. We conclude with open directions in synthetic data in the context of the financial domain.
合成数据在金融领域的应用
合成数据在金融、医疗保健和虚拟现实等各种商业领域取得了长足的进步。我们对合成数据在金融领域的原型应用进行了广泛概述,并特别提供了一些精选应用的更丰富细节。这些应用涵盖了多种数据模式,包括表格、时间序列、事件序列以及市场和零售金融应用中产生的非结构化数据。由于金融是一个高度受监管的行业,合成数据是处理与隐私、公平性和可解释性相关问题的一种潜在方法。最后,我们提出了金融领域合成数据的发展方向。
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