Publication | Closed Access
DocTr: Document Transformer for Structured Information Extraction in Documents
25
Citations
30
References
2023
Year
Unknown Venue
New FormulationEngineeringRich DocumentsSemantic WebCorpus LinguisticsText MiningNatural Language ProcessingStructured Information ExtractionInformation RetrievalData ScienceComputational LinguisticsDocument TransformerNamed-entity RecognitionMachine TranslationEntity DisambiguationInformation ExtractionRelationship ExtractionData ExtractionStructured DocumentAutomatic Annotation
We present a new formulation for structured information extraction (SIE) from visually rich documents. We address the limitations of existing IOB tagging and graph-based formulations, which are either overly reliant on the correct ordering of input text or struggle with decoding a complex graph. Instead, motivated by anchor-based object detectors in computer vision, we represent an entity as an anchor word and a bounding box, and represent entity linking as the association between anchor words. This is more robust to text ordering, and maintains a compact graph for entity linking. The formulation motivates us to introduce 1) a Document Transformer (DocTr) that aims at detecting and associating entity bounding boxes in visually rich documents, and 2) a simple pre-training strategy that helps learn entity detection in the context of language. Evaluations on three SIE benchmarks show the effectiveness of the proposed formulation, and the overall approach outperforms existing solutions.
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