On the causality-preservation capabilities of generative modelling
Yves-C\'edric Bauwelinckx, Jan Dhaene, Tim Verdonck, Milan van den, Heuvel

TL;DR
This paper investigates whether generative adversarial networks (GANs) can reliably preserve causal relationships in synthetic data across different scenarios, addressing a key challenge in applying GANs to finance and insurance modeling.
Contribution
It provides an empirical analysis of GANs' ability to maintain causality in synthetic data for various modeling scenarios, highlighting limitations beyond simple cases.
Findings
GANs preserve causality in simple cross-sectional scenarios
Challenges emerge for complex causal analyses with GAN-generated data
Synthetic data can be used for causal inference under certain assumptions
Abstract
Modeling lies at the core of both the financial and the insurance industry for a wide variety of tasks. The rise and development of machine learning and deep learning models have created many opportunities to improve our modeling toolbox. Breakthroughs in these fields often come with the requirement of large amounts of data. Such large datasets are often not publicly available in finance and insurance, mainly due to privacy and ethics concerns. This lack of data is currently one of the main hurdles in developing better models. One possible option to alleviating this issue is generative modeling. Generative models are capable of simulating fake but realistic-looking data, also referred to as synthetic data, that can be shared more freely. Generative Adversarial Networks (GANs) is such a model that increases our capacity to fit very high-dimensional distributions of data. While research…
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Taxonomy
TopicsMachine Learning in Healthcare · Generative Adversarial Networks and Image Synthesis · Explainable Artificial Intelligence (XAI)
