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Information Extraction from Fiscal Documents using LLMs

Author

Listed:
  • Vikram Aggarwal

    (Google)

  • Jay Kulkarni

    (xKDR Forum)

  • Aakriti Narang

    (xKDR Forum)

  • Aditi Mascarenhas

    (xKDR Forum)

  • Siddarth Raman

    (xKDR Forum)

  • Ajay Shah

    (xKDR Forum)

  • Susan Thomas

    (xKDR Forum)

Abstract

Large Language Models (LLMs) have demonstrated remarkable capabilities in text comprehension, but their ability to process complex, hierarchical tabular data remains underexplored. We present a novel approach to extracting structured data from multi-page government fiscal documents using LLM-based techniques. Applied to large annual fiscal documents from the State of Karnataka in India, our method achieves high accuracy through a multi-stage pipeline that leverages domain knowledge, sequential context, and algorithmic validation. Traditional OCR methods work poorly with errors that are hard to detect. The inherent structure of fiscal tables, with totals at each level of the hierarchy, allows for robust internal validation of the extracted data. We use these hierarchical relationships to create multi-level validation checks. We demonstrate that LLMs can read tables and also process document-specific structural hierarchies, offering a scalable process for converting PDF-based fiscal disclosures into research-ready databases. Our implementation shows promise for broader applications across developing country contexts.

Suggested Citation

  • Vikram Aggarwal & Jay Kulkarni & Aakriti Narang & Aditi Mascarenhas & Siddarth Raman & Ajay Shah & Susan Thomas, 2025. "Information Extraction from Fiscal Documents using LLMs," Working Papers 43, xKDR.
  • Handle: RePEc:anf:wpaper:43
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    File URL: https://papers.xkdr.org/papers/2025Kulkarnietal-acm_icaif.pdf
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    More about this item

    JEL classification:

    • H6 - Public Economics - - National Budget, Deficit, and Debt
    • H7 - Public Economics - - State and Local Government; Intergovernmental Relations
    • Y10 - Miscellaneous Categories - - Data: Tables and Charts - - - Data: Tables and Charts

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