The advent of scalable deep models and large datasets has improved the performance of Neural Machine Translation. Knowledge Distillation (KD) enhances efficiency by transferring knowledge from a teacher model to a more compact student model. However, KD approaches to Transformer architecture often rely on heuristics, particularly when deciding which teacher layers to distill from. In this paper, we introduce the 'Align-to-Distill' (A2D) strategy, designed to address the feature mapping problem by adaptively aligning student attention heads with their teacher counterparts during training. The Attention Alignment Module in A2D performs a dense head-by-head comparison between student and teacher attention heads across layers, turning the combinatorial mapping heuristics into a learning problem. Our experiments show the efficacy of A2D, demonstrating gains of up to +3.61 and +0.63 BLEU points for WMT-2022 De->Dsb and WMT-2014 En->De, respectively, compared to Transformer baselines.
Align-to-Distill: Trainable Attention Alignment for Knowledge Distillation in Neural Machine Translation
The 'Align-to-Distill' (A2D) strategy enhances knowledge distillation in Transformer-based Neural Machine Translation by adaptively aligning student and teacher attention heads, resulting in improved translation performance.
- Year
- 2024
- Venue
- arXiv 2024
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- 6
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- arxiv.org/abs/2403.01479v3ARXIV-DEFAULT
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