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Bibliographic Details
Main Authors: Chen, Qian, Wang, Wen, Zhang, Qinglin, Zheng, Siqi, Zhang, Shiliang, Deng, Chong, Yu, Hai, Liu, Jiaqing, Ma, Yukun, Zhang, Chong
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.11274
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Table of Contents:
  • The Transformer architecture has significantly advanced deep learning, particularly in natural language processing, by effectively managing long-range dependencies. However, as the demand for understanding complex relationships grows, refining the Transformer's architecture becomes critical. This paper introduces Skip-Layer Attention (SLA) to enhance Transformer models by enabling direct attention between non-adjacent layers. This method improves the model's ability to capture dependencies between high-level abstract features and low-level details. By facilitating direct attention between these diverse feature levels, our approach overcomes the limitations of current Transformers, which often rely on suboptimal intra-layer attention. Our implementation extends the Transformer's functionality by enabling queries in a given layer to interact with keys and values from both the current layer and one preceding layer, thus enhancing the diversity of multi-head attention without additional computational burden. Extensive experiments demonstrate that our enhanced Transformer model achieves superior performance in language modeling tasks, highlighting the effectiveness of our skip-layer attention mechanism.