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arxiv:2308.08827

Factuality Detection using Machine Translation -- a Use Case for German Clinical Text

Published on Aug 17, 2023
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Abstract

A transformer-based factuality detection model trained on English data translated to German addresses the challenge of factuality in clinical text with limited data sharing.

Factuality can play an important role when automatically processing clinical text, as it makes a difference if particular symptoms are explicitly not present, possibly present, not mentioned, or affirmed. In most cases, a sufficient number of examples is necessary to handle such phenomena in a supervised machine learning setting. However, as clinical text might contain sensitive information, data cannot be easily shared. In the context of factuality detection, this work presents a simple solution using machine translation to translate English data to German to train a transformer-based factuality detection model.

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