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Federated and Privacy-Preserving Learning of Accounting Data in Financial Statement Audits
Type
conference paper
Date Issued
2022-11-01
Author(s)
Research Team
AIML Lab
Abstract
The ongoing 'digital transformation' fundamentally changes audit evidence's nature, recording, and volume. Nowadays, the International Standards on Auditing (ISA) requires auditors to examine vast volumes of a financial statement's underlying digital accounting records. As a result, audit firms also `digitize' their analytical capabilities and invest in Deep Learning (DL), a successful sub-discipline of Machine Learning. The application of DL offers the ability to learn specialized audit models from data of multiple clients, e.g., organizations operating in the same industry or jurisdiction. In general, regulations require auditors to adhere to strict data confidentiality measures. At the same time, recent intriguing discoveries showed that large-scale DL models are vulnerable to leaking sensitive training data information. Today, it often remains unclear how audit firms can apply DL models while complying with data protection regulations. In this work, we propose a Federated Learning framework to train DL models on auditing relevant accounting data of multiple clients. The framework encompasses Differential Privacy and Split Learning capabilities to mitigate data confidentiality risks at model inference. Our results provide empirical evidence that auditors can benefit from DL models that accumulate knowledge from multiple sources of proprietary client data.
Language
English
Keywords
federated learning
differential privacy
financial auditing
anomaly detection
computer-assisted audit techniques
accounting information systems
enterprise resource planning systems
HSG Classification
contribution to scientific community
HSG Profile Area
None
Book title
Proceedings of the ACM International Conference on Artificial Intelligence in Finance (ICAIF)
Event Title
3rd ACM International Conference on Artificial Intelligence in Finance (ICAIF)
Event Location
New York City, USA
Event Date
Nov. 2-4, 2022
Subject(s)
Division(s)
Contact Email Address
marco.schreyer@unisg.ch
Eprints ID
267136