A Greek Government Decisions Dataset for Public-Sector Analysis and Insight

arXiv — cs.CLFriday, December 12, 2025 at 5:00:00 AM
  • An open, machine-readable dataset of Greek government decisions has been introduced, sourced from the national transparency platform Diavgeia, comprising 1 million decisions with high-quality raw text extracted from PDFs. This dataset is released with a reproducible extraction pipeline and includes qualitative analyses to explore boilerplate patterns and a retrieval-augmented generation (RAG) task to evaluate information access and reasoning over governmental documents.
  • This development is significant as it enhances transparency and accessibility of public-sector information, allowing for advanced analysis and insights into governmental decisions. The dataset serves as a valuable resource for researchers, policymakers, and the public, fostering informed discussions and accountability in governance.
  • The introduction of this dataset aligns with ongoing discussions about the role of large language models in analyzing political biases and the implications of automated systems in public discourse. As biases in language models are scrutinized, the potential for structured retrieval and reasoning over governmental documents becomes increasingly relevant, highlighting the need for ethical considerations in AI applications within the public sector.
— via World Pulse Now AI Editorial System

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