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Offline versus Online Representation Learning of Documents Using External Knowledge

机译:使用外部知识对文档进行脱机与在线表示学习

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摘要

An intensive recent research work investigated the combined use of hand-curated knowledge resources and corpus-driven resources to learn effective text representations. The overall learning process could be run by online revising the learning objective or by offline refining an original learned representation. The differentiated impact of each of the learning approaches on the quality of the learned representations has not been studied so far in the literature. This article focuses on the design of comparable offline vs. online knowledge-enhanced document representation learning models and the comparison of their effectiveness using a set of standard IR and NLP downstream tasks. The results of quantitative and qualitative analyses show that (1) offline vs. online learning approaches have dissimilar result trends regarding the task as well as the dataset distribution counts with regard to domain application; (2) while considering external knowledge resources is undoubtedly beneficial, the way used to express relational constraints could affect semantic inference effectiveness. The findings of this work present opportunities for the design of future representation learning models, but also for providing insights about the evaluation of such models.
机译:最近的一项深入研究工作调查了手工策划的知识资源和语料库驱动资源的组合使用,以学习有效的文本表示形式。整个学习过程可以通过在线修改学习目标或通过离线精炼原始学习表示来运行。迄今为止,尚未在文献中研究每种学习方法对所学表征质量的不同影响。本文着重于设计可比的离线与在线知识增强的文档表示学习模型,以及使用一组标准的IR和NLP下游任务对它们的有效性进行比较。定量和定性分析的结果表明:(1)离线学习与在线学习方法在任务以及针对领域应用的数据集分布计数方面有不同的结果趋势; (2)虽然考虑到外部知识资源无疑是有益的,但是表达关系约束的方式可能会影响语义推理的有效性。这项工作的发现为未来的表征学习模型的设计提供了机会,同时也提供了对此类模型评估的见识。

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