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Unsupervised Pseudo-Labeling for Extractive Summarization on Electronic Health Records (1811.08040v3)
Published 20 Nov 2018 in cs.CL
Abstract: Extractive summarization is very useful for physicians to better manage and digest Electronic Health Records (EHRs). However, the training of a supervised model requires disease-specific medical background and is thus very expensive. We studied how to utilize the intrinsic correlation between multiple EHRs to generate pseudo-labels and train a supervised model with no external annotation. Experiments on real-patient data validate that our model is effective in summarizing crucial disease-specific information for patients.
- Xiangan Liu (1 paper)
- Keyang Xu (12 papers)
- Pengtao Xie (86 papers)
- Eric Xing (127 papers)