Feb. 6, 2024, 5:54 a.m. | Cunxiao Du Hao Zhou Zhaopeng Tu Jing Jiang

cs.CL updates on arXiv.org arxiv.org

In this paper, we re-examine the Markov property in the context of neural machine translation. We design a Markov Autoregressive Transformer~(MAT) and undertake a comprehensive assessment of its performance across four WMT benchmarks. Our findings indicate that MAT with an order larger than 4 can generate translations with quality on par with that of conventional autoregressive transformers. In addition, counter-intuitively, we also find that the advantages of utilizing a higher-order MAT do not specifically contribute to the translation of longer …

assessment benchmarks context cs.cl design generate machine machine translation markov neural machine translation paper performance property quality transformer translation

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