Abstract
BackgroundClinical Named Entity Recognition is to find the name of diseases, body parts and other related terms from the given text. Because Chinese language is quite different with English language, the machine cannot simply get the graphical and phonetic information form Chinese characters. The method for Chinese should be different from that for English. Chinese characters present abundant information with the graphical features, recent research on Chinese word embedding tries to use graphical information as subword. This paper uses both graphical and phonetic features to improve Chinese Clinical Named Entity Recognition based on the presence of phono-semantic characters.MethodsThis paper proposed three different embedding models and tested them on the annotated data. The data have been divided into two sections for exploring the effect of the proportion of phono-semantic characters.ResultsThe model using primary radical and pinyin can improve Clinical Named Entity Recognition in Chinese and get the F-measure of 0.712. More phono-semantic characters does not give a better result.ConclusionsThe paper proves that the use of the combination of graphical and phonetic features can improve the Clinical Named Entity Recognition in Chinese.
Highlights
Clinical Named Entity Recognition is to find the name of diseases, body parts and other related terms from the given text
Which means illness, has two radicals, and. In this case, is the primary radical and suggests the meaning of the character is related to illness, and contains phonetic information suggesting the pronunciation of the character
The primary radical usually implies the meaning of a character
Summary
This paper is an extended version of the workshop paper presented in BHI 2018 [1], discussions and new experiments about how phono-semantic characters will affect the result of applying the new method are stated in this paper
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