Synthetic Data for Financial Anomaly Detection: AI-Driven Approaches to Simulate Rare Events and Improve Model Robustness

Authors

  • Akila Selvaraj iQi Inc, USA Author
  • Deepak Venkatachalam CVS Health, USA Author
  • Gunaseelan Namperumal ERP Analysts Inc, USA Author

Keywords:

synthetic data, financial anomaly detection

Abstract

The use of synthetic data in financial anomaly detection has garnered significant attention due to its potential to enhance model robustness by simulating rare, high-impact events that are challenging to capture in real-world data. This paper investigates AI-driven approaches to generating synthetic data for the purpose of financial anomaly detection, with a specific focus on simulating rare events such as market crashes, fraudulent transactions, and systemic risks. Given the inherent scarcity of such anomalies in historical datasets, synthetic data generation techniques provide a promising avenue to overcome data limitations and improve the training and performance of anomaly detection models.

The study begins by outlining the critical need for synthetic data in financial contexts where rare events can lead to substantial economic repercussions. Traditional models trained on historical data often fail to generalize to unseen, rare events due to the imbalanced nature of these datasets, thereby limiting their effectiveness in real-world scenarios. This paper argues that synthetic data, generated through advanced AI techniques such as Generative Adversarial Networks (GANs), Variational Autoencoders (VAEs), and agent-based modeling, can fill this gap by creating diverse and representative datasets that encapsulate a broader spectrum of potential anomalies.

We delve into a comparative analysis of various synthetic data generation methodologies, highlighting their theoretical foundations, implementation complexities, and suitability for different types of financial anomalies. GANs have emerged as a prominent tool due to their ability to generate high-dimensional, realistic data that mirrors complex distributions found in financial markets. The paper discusses the mechanics of GAN-based synthetic data generation, including the design of discriminator and generator networks, loss functions, and training stability concerns. Furthermore, we evaluate the effectiveness of VAEs, which leverage probabilistic modeling to create synthetic data points from latent space distributions, offering a robust alternative for generating a wide range of anomaly types. The utility of agent-based models is also explored, particularly in scenarios where the synthetic generation of macroeconomic events requires the incorporation of dynamic, multi-agent interactions to replicate market behavior and stress conditions.

An in-depth empirical evaluation is conducted to assess the impact of synthetic data on anomaly detection model performance. We employ various machine learning algorithms such as random forests, support vector machines, and deep learning architectures, including recurrent neural networks and convolutional neural networks, to detect anomalies in both traditional and synthetic datasets. Our results indicate that incorporating synthetic data into model training can significantly improve the sensitivity and specificity of anomaly detection systems, especially in identifying extreme tail events that are underrepresented in real-world data. This paper also presents a case study on using synthetic data for detecting financial fraud, demonstrating the practicality and effectiveness of this approach in enhancing the robustness and adaptability of detection models under diverse and unforeseen scenarios.

The discussion further extends to the technical challenges and ethical considerations associated with synthetic data generation in finance. While synthetic data presents an innovative solution to the problem of data scarcity and imbalance, there are notable risks, including data privacy concerns, potential model overfitting to synthetic patterns, and the risk of adversarial exploitation. The paper offers a critical examination of these challenges, proposing several mitigative strategies, such as incorporating differential privacy techniques and ensuring the continual validation of synthetic data against real-world scenarios to maintain model generalization capabilities. Additionally, regulatory implications of using synthetic data in financial applications are discussed, emphasizing the need for a balanced approach that maximizes model robustness while ensuring compliance with existing and emerging financial regulations.

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Published

08-01-2023

How to Cite

[1]
Akila Selvaraj, Deepak Venkatachalam, and Gunaseelan Namperumal, “Synthetic Data for Financial Anomaly Detection: AI-Driven Approaches to Simulate Rare Events and Improve Model Robustness”, J. of Artificial Int. Research and App., vol. 2, no. 1, pp. 373–425, Jan. 2023, Accessed: Nov. 15, 2024. [Online]. Available: https://aimlstudies.co.uk/index.php/jaira/article/view/221

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