From Trust to Truth: Actionable policies for the use of AI in fact-checking in Germany and Ukraine
- URL: http://arxiv.org/abs/2503.18724v1
- Date: Mon, 24 Mar 2025 14:34:00 GMT
- Title: From Trust to Truth: Actionable policies for the use of AI in fact-checking in Germany and Ukraine
- Authors: Veronika Solopova,
- Abstract summary: The rise of Artificial Intelligence (AI) presents unprecedented opportunities and challenges for journalism, fact-checking and media regulation.<n>While AI offers tools to combat disinformation and enhance media practices, its unregulated use and associated risks necessitate clear policies and collaborative efforts.<n>This policy paper explores the implications of AI for journalism and fact-checking, with a focus on addressing disinformation and fostering responsible AI integration.
- Score: 0.081585306387285
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The rise of Artificial Intelligence (AI) presents unprecedented opportunities and challenges for journalism, fact-checking and media regulation. While AI offers tools to combat disinformation and enhance media practices, its unregulated use and associated risks necessitate clear policies and collaborative efforts. This policy paper explores the implications of artificial intelligence (AI) for journalism and fact-checking, with a focus on addressing disinformation and fostering responsible AI integration. Using Germany and Ukraine as key case studies, it identifies the challenges posed by disinformation, proposes regulatory and funding strategies, and outlines technical standards to enhance AI adoption in media. The paper offers actionable recommendations to ensure AI's responsible and effective integration into media ecosystems. AI presents significant opportunities to combat disinformation and enhance journalistic practices. However, its implementation lacks cohesive regulation, leading to risks such as bias, transparency issues, and over-reliance on automated systems. In Ukraine, establishing an independent media regulatory framework adapted to its governance is crucial, while Germany can act as a leader in advancing EU-wide collaborations and standards. Together, these efforts can shape a robust AI-driven media ecosystem that promotes accuracy and trust.
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