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BERT might be Overkill: A Tiny but Effective Biomedical Entity Linker based on Residual Convolutional Neural Networks

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Biomedical entity linking is the task of linking entity mentions in a biomedical document to referent entities in a knowledge base. Recently, many BERT-based models have been introduced for the task. While these models have achieved competitive results on many datasets, they are computationally expensive and contain about 110M parameters. Little is known about the factors contributing to their impressive performance and whether the over-parameterization is needed. In this work, we shed some light on the inner working mechanisms of these large BERT-based models. Through a set of probing experiments, we have found that the entity linking performance only changes slightly when the input word order is shuffled or when the attention scope is limited to a fixed window size. From these observations, we propose an efficient convolutional neural network with residual connections for biomedical entity linking. Because of the sparse connectivity and weight sharing properties, our model has a small number of parameters and is highly efficient. On five public datasets, our model achieves comparable or even better linking accuracy than the state-of-the-art BERT-based models while having about 60 times fewer parameters.

Tuan Lai, Heng Ji, ChengXiang Zhai• 2021

Related benchmarks

TaskDatasetResultRank
Biomedical Entity LinkingNCBI
Acc@192.4
20
Biomedical Entity LinkingCOMETA
Acc@180.1
20
Biomedical Entity LinkingBC5CDR
Accuracy @194
15
Biomedical Entity LinkingAAP
Accuracy@177.4
15
Biomedical Entity LinkingMM-ST21pv
Acc@155
13
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