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Med-EASi: Finely Annotated Dataset and Models for Controllable Simplification of Medical Texts

A crowdsourced and annotated dataset enhances medical text simplification by fine-tuning T5-large with controllable and position-aware strategies, improving model performance over unannotated baselines.

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Year
2023
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arXiv 2023
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4
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arxiv.org/abs/2302.09155ARXIV-DEFAULT
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Abstract

Automatic medical text simplification can assist providers with patient-friendly communication and make medical texts more accessible, thereby improving health literacy. But curating a quality corpus for this task requires the supervision of medical experts. In this work, we present Med-EASi (\underline{Med}ical dataset for \underline{E}laborative and \underline{A}bstractive \underline{Si}mplification), a uniquely crowdsourced and finely annotated dataset for supervised simplification of short medical texts. Its expert-layman-AI collaborative annotations facilitate controllability over text simplification by marking four kinds of textual transformations: elaboration, replacement, deletion, and insertion. To learn medical text simplification, we fine-tune T5-large with four different styles of input-output combinations, leading to two control-free and two controllable versions of the model. We add two types of controllability into text simplification, by using a multi-angle training approach: position-aware, which uses in-place annotated inputs and outputs, and position-agnostic, where the model only knows the contents to be edited, but not their positions. Our results show that our fine-grained annotations improve learning compared to the unannotated baseline. Furthermore, position-aware control generates better simplification than the position-agnostic one. The data and code are available at https://github.com/Chandrayee/CTRL-SIMP.

Authors

4