1 research outputs found
LMDX: Language Model-based Document Information Extraction and Localization
Large Language Models (LLM) have revolutionized Natural Language Processing
(NLP), improving state-of-the-art on many existing tasks and exhibiting
emergent capabilities. However, LLMs have not yet been successfully applied on
semi-structured document information extraction, which is at the core of many
document processing workflows and consists of extracting key entities from a
visually rich document (VRD) given a predefined target schema. The main
obstacles to LLM adoption in that task have been the absence of layout encoding
within LLMs, critical for a high quality extraction, and the lack of a
grounding mechanism ensuring the answer is not hallucinated. In this paper, we
introduce Language Model-based Document Information Extraction and Localization
(LMDX), a methodology to adapt arbitrary LLMs for document information
extraction. LMDX can do extraction of singular, repeated, and hierarchical
entities, both with and without training data, while providing grounding
guarantees and localizing the entities within the document. In particular, we
apply LMDX to the PaLM 2-S LLM and evaluate it on VRDU and CORD benchmarks,
setting a new state-of-the-art and showing how LMDX enables the creation of
high quality, data-efficient parsers