Regulating Intelligent Systems in Digital Governance and Legal Transformation
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Abstract
The accelerating deployment of intelligent systems across public administration, economic regulation, and legal processes has profoundly reshaped the landscape of digital governance, raising complex challenges for accountability, transparency, and the protection of fundamental rights. While artificial intelligence offers significant opportunities for efficiency, predictive capacity, and data-driven governance, it simultaneously exposes limitations within traditional legal frameworks that were not designed to regulate autonomous, adaptive, and cross-border technologies. This study provides a comprehensive analysis of how intelligent systems are driving legal transformation in the context of digital governance, with particular emphasis on regulatory lag, algorithmic opacity, jurisdictional fragmentation, and evolving liability regimes. Drawing on comparative regulatory approaches—including the European Union’s rights-based model, market-oriented frameworks in the United States, and state-centered strategies in parts of Asia—the paper advances an adaptive and principle-based regulatory paradigm. Central to this paradigm are transparency obligations, explainable AI, human- and society-in-the-loop oversight mechanisms, and regulatory sandboxes for high-risk applications. By synthesizing theoretical insights, regulatory practices, and empirical case evidence from sectors such as healthcare, finance, and public administration, the study argues that effective governance of intelligent systems requires dynamic, interdisciplinary, and participatory legal frameworks capable of reconciling innovation with democratic values and fundamental rights protection.
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