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Sentence Embedding Alignment for Lifelong Relation Extraction

机译:句子嵌入对齐用于终身关系提取

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摘要

Conventional approaches to relation extraction usually require a fixed set of pre-defined relations. Such requirement is hard to meet in many real applications, especially when new data and relations are emerging incessantly and it is computationally expensive to store all data and re-train the whole model every time new data and relations come in. We formulate such a challenging problem as lifelong relation extraction and investigate memory-efficient incremental learning methods without catastrophically forgetting knowledge learned from previous tasks. We first investigate a modified version of the stochastic gradient methods with a replay memory, which surprisingly outperforms recent state-of-the-art lifelong learning methods. We further propose to improve this approach to alleviate the forgetting problem by anchoring the sentence embedding space. Specifically, we utilize an explicit alignment model to mitigate the sentence embedding distortion of the learned model when training on new data and new relations. Experiment results on multiple benchmarks show that our proposed method significantly outperforms the state-of-the-art lifelong learning approaches.
机译:关系提取的常规方法通常需要一组固定的预定义关系。在许多实际应用中很难满足这样的要求,尤其是在不断出现新数据和关系时,每次输入新数据和关系时存储所有数据并重新训练整个模型在计算上都是昂贵的。问题是终身关系提取,并研究记忆有效的增量学习方法,而不会灾难性地忘记从以前的任务中学到的知识。我们首先研究了带有回放记忆的随机梯度方法的改进版本,该方法令人惊讶地优于最新的终身学习方法。我们进一步提出通过锚定句子嵌入空间来改进这种方法来减轻遗忘问题。具体来说,当训练新数据和新关系时,我们利用显式对齐模型来减轻学习模型的句子嵌入失真。在多个基准上的实验结果表明,我们提出的方法明显优于最新的终身学习方法。

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