An Energy-based Model for Word-level AutoCompletion in Computer-aided Translation

Cheng Yang, Guoping Huang, Mo Yu, Zhirui Zhang, Siheng Li, Mingming Yang, Shuming Shi, Yujiu Yang, Lemao Liu
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Abstract

Abstract Word-level AutoCompletion (WLAC) is a rewarding yet challenging task in Computer-aided Translation. Existing work addresses this task through a classification model based on a neural network that maps the hidden vector of the input context into its corresponding label (i.e., the candidate target word is treated as a label). Since the context hidden vector itself does not take the label into account and it is projected to the label through a linear classifier, the model cannot sufficiently leverage valuable information from the source sentence as verified in our experiments, which eventually hinders its overall performance. To alleviate this issue, this work proposes an energy-based model for WLAC, which enables the context hidden vector to capture crucial information from the source sentence. Unfortunately, training and inference suffer from efficiency and effectiveness challenges, therefore we employ three simple yet effective strategies to put our model into practice. Experiments on four standard benchmarks demonstrate that our reranking-based approach achieves substantial improvements (about 6.07%) over the previous state-of-the-art model. Further analyses show that each strategy of our approach contributes to the final performance.1
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基于能量的计算机辅助翻译单词级自动补全模型
摘要 单词级自动完成(WLAC)是计算机辅助翻译中一项既有价值又具有挑战性的任务。现有工作通过基于神经网络的分类模型来完成这项任务,该模型将输入上下文的隐藏向量映射到相应的标签(即候选目标词被视为标签)。由于上下文隐藏向量本身并不考虑标签,而且它是通过线性分类器投射到标签上的,因此该模型无法充分利用源句中的有价值信息,这在我们的实验中得到了验证,最终影响了其整体性能。为了缓解这一问题,本研究提出了一种基于能量的 WLAC 模型,它能使上下文隐藏向量捕捉到源句中的关键信息。不幸的是,训练和推理在效率和有效性方面都面临挑战,因此我们采用了三种简单而有效的策略来实践我们的模型。在四个标准基准上进行的实验表明,我们基于重排的方法比以前的先进模型有了大幅提高(约 6.07%)。进一步的分析表明,我们方法中的每种策略都对最终性能有所贡献1。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Beyond Boundaries: A Human-like Approach for Question Answering over Structured and Unstructured Information Sources Addressing the Binning Problem in Calibration Assessment through Scalar Annotations An Energy-based Model for Word-level AutoCompletion in Computer-aided Translation Addressing the Binning Problem in Calibration Assessment through Scalar Annotations An Energy-based Model for Word-level AutoCompletion in Computer-aided Translation
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