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Trajectory-Based Meta-Learning for Out-Of-Vocabulary Word Embedding Learning

机译:基于轨迹的元学习,用于嵌入学习的词汇单词

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Word embedding learning methods require a large number of occurrences of a word to accurately leam its embedding. However, out-of-vocabulary (OOV) words which do not appear in the training corpus emerge frequently in the smaller downstream data. Recent work formulated OOV embedding learning as a few-shot regression problem and demonstrated that meta-learning can improve results obtained. However, the algorithm used, model-agnostic meta-learning (MAML) is known to be unstable and perform worse when a large number of gradient steps are used for parameter updates. In this work, we propose the use of Leap, a meta-learning algorithm which leverages the entire trajectory of the learning process instead of just the beginning and the end points, and thus ameliorates these two issues. In our experiments on a benchmark OOV embedding learning dataset and in an extrinsic evaluation, Leap performs comparably or better than MAML. We go on to examine which contexts are most beneficial to learn an OOV embedding from, and propose that the choice of contexts may matter more than the meta-learning employed.
机译:嵌入学习方法的单词需要大量的单词来准确地联系其嵌入。但是,在较小的下游数据中经常出现在训练语料库中不会出现的词汇(OOV)单词。最近的工作制定了OOV嵌入学习作为几次回归问题,并证明了元学习可以提高获得的结果。然而,已知使用的算法,模型 - 不可止地学习(MAML)是不稳定的,并且当大量梯度步骤用于参数更新时,更差。在这项工作中,我们提出了利用飞跃,一个元学习算法,它利用了学习过程的整个轨迹而不是起点和终点,因此改善了这两个问题。在我们对嵌入学习数据集的基准OOV的实验中,在外在评估中,跨越比MAML相当或更好。我们继续研究哪些背景,学习oov嵌入的oov嵌入的人,并建议选择上下文可能超过所雇用的元学习。

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