On Long-Tailed Phenomena in Neural Machine Translation

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Authors Vikas Raunak, Siddharth Dalmia, Vivek Gupta, Florian Metze arXiv ID 2010.04924 Category cs.CL: Computation & Language Cross-listed cs.AI, cs.LG Citations 30 Venue Findings Last Checked 4 months ago
Abstract
State-of-the-art Neural Machine Translation (NMT) models struggle with generating low-frequency tokens, tackling which remains a major challenge. The analysis of long-tailed phenomena in the context of structured prediction tasks is further hindered by the added complexities of search during inference. In this work, we quantitatively characterize such long-tailed phenomena at two levels of abstraction, namely, token classification and sequence generation. We propose a new loss function, the Anti-Focal loss, to better adapt model training to the structural dependencies of conditional text generation by incorporating the inductive biases of beam search in the training process. We show the efficacy of the proposed technique on a number of Machine Translation (MT) datasets, demonstrating that it leads to significant gains over cross-entropy across different language pairs, especially on the generation of low-frequency words. We have released the code to reproduce our results.
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