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ODE Transformer: An Ordinary Differential Equation-Inspired Model for Neural Machine Translation

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arxiv 2104.02308 v1 pith:OPHXCYJS submitted 2021-04-06 cs.CL

ODE Transformer: An Ordinary Differential Equation-Inspired Model for Neural Machine Translation

classification cs.CL
keywords transformerodesdifferentialen-frmodelordinaryresidualachieves
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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It has been found that residual networks are an Euler discretization of solutions to Ordinary Differential Equations (ODEs). In this paper, we explore a deeper relationship between Transformer and numerical methods of ODEs. We show that a residual block of layers in Transformer can be described as a higher-order solution to ODEs. This leads us to design a new architecture (call it ODE Transformer) analogous to the Runge-Kutta method that is well motivated in ODEs. As a natural extension to Transformer, ODE Transformer is easy to implement and parameter efficient. Our experiments on three WMT tasks demonstrate the genericity of this model, and large improvements in performance over several strong baselines. It achieves 30.76 and 44.11 BLEU scores on the WMT'14 En-De and En-Fr test data. This sets a new state-of-the-art on the WMT'14 En-Fr task.

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