Pea-KD: Parameter-efficient and Accurate Knowledge Distillation on BERT
How can we efficiently compress a model while maintaining its performance? Knowledge Distillation (KD) is one of the widely known methods for model compression. In essence, KD trains a smaller student model based on a larger teacher model and tries to retain the teacher model's level of perform...
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Zusammenfassung: | How can we efficiently compress a model while maintaining its performance?
Knowledge Distillation (KD) is one of the widely known methods for model
compression. In essence, KD trains a smaller student model based on a larger
teacher model and tries to retain the teacher model's level of performance as
much as possible. However, existing KD methods suffer from the following
limitations. First, since the student model is smaller in absolute size, it
inherently lacks model capacity. Second, the absence of an initial guide for
the student model makes it difficult for the student to imitate the teacher
model to its fullest. Conventional KD methods yield low performance due to
these limitations. In this paper, we propose Pea-KD (Parameter-efficient and
accurate Knowledge Distillation), a novel approach to KD. Pea-KD consists of
two main parts: Shuffled Parameter Sharing (SPS) and Pretraining with Teacher's
Predictions (PTP). Using this combination, we are capable of alleviating the
KD's limitations. SPS is a new parameter sharing method that increases the
student model capacity. PTP is a KD-specialized initialization method, which
can act as a good initial guide for the student. When combined, this method
yields a significant increase in student model's performance. Experiments
conducted on BERT with different datasets and tasks show that the proposed
approach improves the student model's performance by 4.4\% on average in four
GLUE tasks, outperforming existing KD baselines by significant margins. |
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DOI: | 10.48550/arxiv.2009.14822 |