EMNLP2020

An Empirical Study of Generation Order for Machine Translation

William Chan, Mitchell Stern, Jamie Kiros, Jakob Uszkoreit

7 citations

Abstract

In this work, we present an empirical study of generation order for machine translation. Building on recent advances in insertion-based modeling, we first introduce a soft orderreward framework that enables us to train models to follow arbitrary oracle generation policies. We then make use of this framework to explore a large variety of generation orders, including uninformed orders, locationbased orders, frequency-based orders, contentbased orders, and model-based orders. Curiously, we find that for the WMT'14 English → German and WMT'18 English → Chinese translation tasks, order does not have a substantial impact on output quality. Moreover, for English → German, we even discover that unintuitive orderings such as alphabetical and shortest-first can match the performance of a standard Transformer, suggesting that traditional left-to-right generation may not be necessary to achieve high performance.