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arxiv: 2004.08178 · v5 · pith:HJ2GVRT3new · submitted 2020-04-17 · 💻 cs.CL · cs.LG

Highway Transformer: Self-Gating Enhanced Self-Attentive Networks

classification 💻 cs.CL cs.LG
keywords gatesgatinghighwayinformationlatenttransformerunitsalgorithms
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Self-attention mechanisms have made striking state-of-the-art (SOTA) progress in various sequence learning tasks, standing on the multi-headed dot product attention by attending to all the global contexts at different locations. Through a pseudo information highway, we introduce a gated component self-dependency units (SDU) that incorporates LSTM-styled gating units to replenish internal semantic importance within the multi-dimensional latent space of individual representations. The subsidiary content-based SDU gates allow for the information flow of modulated latent embeddings through skipped connections, leading to a clear margin of convergence speed with gradient descent algorithms. We may unveil the role of gating mechanism to aid in the context-based Transformer modules, with hypothesizing that SDU gates, especially on shallow layers, could push it faster to step towards suboptimal points during the optimization process.

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