Not all layers are equally as important: Every Layer Counts BERT
Abstract
A modified transformer architecture allows each layer to selectively process outputs from previous layers, improving data efficiency in pretraining language models.
This paper introduces a novel modification of the transformer architecture, tailored for the data-efficient pretraining of language models. This aspect is evaluated by participating in the BabyLM challenge, where our solution won both the strict and strict-small tracks. Our approach allows each transformer layer to select which outputs of previous layers to process. The empirical results verify the potential of this simple modification and show that not all layers are equally as important.
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