Chetan Ramaiah
2022
DocQueryNet: Value Retrieval with Arbitrary Queries for Form-like Documents
Mingfei Gao
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Le Xue
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Chetan Ramaiah
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Chen Xing
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Ran Xu
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Caiming Xiong
Proceedings of the 29th International Conference on Computational Linguistics
We propose, DocQueryNet, a value retrieval method with arbitrary queries for form-like documents to reduce human effort of processing forms. Unlike previous methods that only address a fixed set of field items, our method predicts target value for an arbitrary query based on the understanding of the layout and semantics of a form. To further boost model performance, we propose a simple document language modeling (SimpleDLM) strategy to improve document understanding on large-scale model pre-training. Experimental results show that DocQueryNet outperforms previous designs significantly and the SimpleDLM further improves our performance on value retrieval by around 17% F1 score compared with the state-of-the-art pre-training method. Code is available here, https://github.com/salesforce/QVR-SimpleDLM.
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