CLLGOct 10, 2022

Multi-CLS BERT: An Efficient Alternative to Traditional Ensembling

arXiv:2210.05043v2229 citationsh-index: 111
Originality Highly original
AI Analysis

This addresses the problem of high resource costs in BERT ensembling for NLP practitioners, offering an efficient alternative.

The paper tackles the computational inefficiency of ensembling BERT models by proposing Multi-CLS BERT, a method that uses multiple CLS tokens to achieve similar accuracy with nearly 4-times less computation and memory, outperforming BERT_Large with limited data.

Ensembling BERT models often significantly improves accuracy, but at the cost of significantly more computation and memory footprint. In this work, we propose Multi-CLS BERT, a novel ensembling method for CLS-based prediction tasks that is almost as efficient as a single BERT model. Multi-CLS BERT uses multiple CLS tokens with a parameterization and objective that encourages their diversity. Thus instead of fine-tuning each BERT model in an ensemble (and running them all at test time), we need only fine-tune our single Multi-CLS BERT model (and run the one model at test time, ensembling just the multiple final CLS embeddings). To test its effectiveness, we build Multi-CLS BERT on top of a state-of-the-art pretraining method for BERT (Aroca-Ouellette and Rudzicz, 2020). In experiments on GLUE and SuperGLUE we show that our Multi-CLS BERT reliably improves both overall accuracy and confidence estimation. When only 100 training samples are available in GLUE, the Multi-CLS BERT_Base model can even outperform the corresponding BERT_Large model. We analyze the behavior of our Multi-CLS BERT, showing that it has many of the same characteristics and behavior as a typical BERT 5-way ensemble, but with nearly 4-times less computation and memory.

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