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downstream utility. The study further contributes actionable policy recommendations
                  categorized   for   regulators,   financial   institutions,  and   researchers.   These
                  recommendations offer a roadmap for integrating Financial GANs into supervisory
                  sandboxes and production pipelines while ensuring measurable privacy and reliability.
                  Ultimately, this research highlights how governing synthetic data as a digital asset can
                  safely accelerate the economic transformation of the financial sector.

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