Field Extraction from Forms with Unlabeled Data

PROCEEDINGS OF THE 1ST WORKSHOP ON SEMIPARAMETRIC METHODS IN NLP: DECOUPLING LOGIC FROM KNOWLEDGE (SPA-NLP 2022)(2022)

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摘要
We propose a novel framework to conduct field extraction from forms with unlabeled data. To bootstrap the training process, we develop a rule-based method for mining noisy pseudo-labels from unlabeled forms. Using the supervisory signal from the pseudo-labels, we extract a discriminative token representation from a transformer-based model by modeling the interaction between text in the form. To prevent the model from overfitting to label noise, we introduce a refinement module based on a progressive pseudo-label ensemble. Experimental results demonstrate the effectiveness of our framework.
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关键词
forms,field,extraction
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