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Semi-supervised Representation Learning for Domain Adaptation using Dynamic Dependency Networks

机译:使用动态依赖网络的半监督表示域适应

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Recently, various unsupervised representation learning approaches have been investigated to produce augmenting features for natural language processing systems in the open-domain learning scenarios. In this paper, we propose a dynamic dependency network model to conduct semi-supervised representation learning. It exploits existing task-specific labels in the source domain in addition to the large amount of unlabeled data from both the source and target domains to produce informative features for NLP tasks. We empirically evaluate the proposed learning technique on the part-of-speech tagging task using Wall Street Journal and MEDLINE sentences and on the syntactic chunking task using Wall Street Journal corpus and Brown corpus. Our experimental results show that the proposed semi-supervised learning model can produce more effective features than unsupervised representation learning methods for open-domain part-of-speech taggers and syntactic chunkers.
机译:最近,已经研究了各种无监督的代表学习方法,以在开放式学习场景中产生用于自然语言处理系统的增强功能。在本文中,我们提出了一种动态依赖网络模型来进行半监督表示学习。除了来自源域和目标域的大量未标记的数据外,它还利用源域中的现有任务特定标签,以为NLP任务生成信息性功能。我们在使用华尔街日记和Medline句子和棕色语料库中使用华尔街日记和棕色语料库的句法分组任务,凭借讲话标记任务的提出的学习技术。我们的实验结果表明,所提出的半监督学习模型可以为开放式域部分 - 语音标签和句法块的智能化学习方法产生更有效的特征。

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