金融合成数据的生成:机遇、挑战和陷阱

Samuel A. Assefa
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引用次数: 96

摘要

金融服务产生了大量极其复杂和多变的数据。由于各种原因,包括但不限于监管要求和业务需求,这些数据集通常存储在组织内部的孤岛中。因此,在不同的业务范围内以及组织外部(例如,与研究界)的数据共享受到严重限制。因此,研究综合金融数据集的方法至关重要,这些数据集遵循真实数据的相同属性,同时尊重相关各方的隐私需求。这篇介绍性论文旨在强调金融领域对有效合成数据生成的日益增长的需求。我们强调在生成合成金融数据集时特别重要的三个主要关注领域:1)生成现实的合成数据集。2)测量真实数据集和生成数据集之间的相似性。3)确保生成过程满足任何隐私约束。尽管这些挑战也存在于其他领域,但金融服务领域的额外监管和隐私要求提出了其他领域没有提出的独特问题。由于金融服务业的规模和影响力,回答这些问题可能会产生巨大而持久的影响。最后,我们的目标是使用两种类型的财务数据集作为示例,开发用于生成合成财务数据的共享词汇表和上下文。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generating synthetic data in finance: opportunities, challenges and pitfalls
Financial services generate a huge volume of data that is extremely complex and varied. These datasets are often stored in silos within organisations for various reasons, including but not limited to regulatory requirements and business needs. As a result, data sharing within different lines of business as well as outside of the organisation (e.g. to the research community) is severely limited. It is therefore critical to investigate methods for synthesising financial datasets that follow the same properties of the real data while respecting the need for privacy of the parties involved. This introductory paper aims to highlight the growing need for effective synthetic data generation in the financial domain. We highlight three main areas of focus that are of particular importance while generating synthetic financial datasets: 1) Generating realistic synthetic datasets. 2) Measuring the similarities between real and generated datasets. 3) Ensuring the generative process satisfies any privacy constraints. Although these challenges are also present in other domains, the additional regulatory and privacy requirements within financial services present unique questions that are not asked elsewhere. Due to the size and influence of the financial services industry, answering these questions has the potential for a great and lasting impact. Finally, we aim to develop a shared vocabulary and context for generating synthetic financial data using two types of financial datasets as examples.
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