Relaxed Attention for Transformer Models (2209.09735v1)
Abstract: The powerful modeling capabilities of all-attention-based transformer architectures often cause overfitting and - for natural language processing tasks - lead to an implicitly learned internal LLM in the autoregressive transformer decoder complicating the integration of external LLMs. In this paper, we explore relaxed attention, a simple and easy-to-implement smoothing of the attention weights, yielding a two-fold improvement to the general transformer architecture: First, relaxed attention provides regularization when applied to the self-attention layers in the encoder. Second, we show that it naturally supports the integration of an external LLM as it suppresses the implicitly learned internal LLM by relaxing the cross attention in the decoder. We demonstrate the benefit of relaxed attention across several tasks with clear improvement in combination with recent benchmark approaches. Specifically, we exceed the former state-of-the-art performance of 26.90% word error rate on the largest public lip-reading LRS3 benchmark with a word error rate of 26.31%, as well as we achieve a top-performing BLEU score of 37.67 on the IWSLT14 (DE$\rightarrow$EN) machine translation task without external LLMs and virtually no additional model parameters. Code and models will be made publicly available.
- Timo Lohrenz (3 papers)
- Björn Möller (2 papers)
- Zhengyang Li (35 papers)
- Tim Fingscheidt (56 papers)