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arxiv: 2109.00442 · v1 · pith:OQDGX6TV · submitted 2021-09-01 · cs.CL · cs.LG

Position Masking for Improved Layout-Aware Document Understanding

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classification cs.CL cs.LG
keywords maskingpositionembeddingslanguagelayout-awaredocumentimprovemodels
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Natural language processing for document scans and PDFs has the potential to enormously improve the efficiency of business processes. Layout-aware word embeddings such as LayoutLM have shown promise for classification of and information extraction from such documents. This paper proposes a new pre-training task called that can improve performance of layout-aware word embeddings that incorporate 2-D position embeddings. We compare models pre-trained with only language masking against models pre-trained with both language masking and position masking, and we find that position masking improves performance by over 5% on a form understanding task.

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