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Multilingual Relation Extraction using Compositional Universal Schema

机译:多语种关系采用组成通用架构提取

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摘要

Universal schema builds a knowledge base (KB) of entities and relations by jointly embedding all relation types from input KBs as well as textual patterns observed in raw text. In most previous applications of universal schema, each textual pattern is represented as a single embedding, preventing generalization to unseen patterns. Recent work employs a neural network to capture patterns' compositional semantics, providing generalization to all possible input text. In response, this paper introduces significant further improvements to the coverage and flexibility of universal schema relation extraction: predictions for entities unseen in training and multilingual transfer learning to domains with no annotation. We evaluate our model through extensive experiments on the English and Spanish TAC KBP benchmark, outperforming the top system from TAC 2013 slot-filling using no handwritten patterns or additional annotation. We also consider a multilingual setting in which English training data entities overlap with the seed KB, but Spanish text does not. Despite having no annotation for Spanish data, we train an accurate predictor, with additional improvements obtained by tying word embeddings across languages. Furthermore, we find that multilingual training improves English relation extraction accuracy. Our approach is thus suited to broad-coverage automated knowledge base construction in a variety of languages and domains.
机译:Universal Schema通过共同嵌入来自输入KB的所有关系类型以及在原始文本中观察到的文本模式,构建了实体和关系的知识库(KB)。在最先前的通用架构应用中,每个文本模式都表示为单个嵌入,防止泛化是看不见的模式。最近的工作采用神经网络来捕获模式的组成语义,为所有可能的输入文本提供泛化。作为回应,本文介绍了通用架构关系提取的覆盖率和灵活性的显着进一步改善:对培训和多语言转移的实体预测,没有注释的域名。我们通过对英语和西班牙语TAC KBP基准测试的广泛实验来评估我们的模型,优于来自TAC 2013插槽填充的顶级系统,使用没有手写模式或额外的注释。我们还考虑了一个多语言设置,其中英文训练数据实体与种子KB重叠,但西班牙文文本没有。尽管没有用于西班牙数据的注释,我们培养了一个准确的预测因子,通过跨语言绑定单词嵌入来获得额外的改进。此外,我们发现,多语言培训提高了英语关系提取精度。因此,我们的方法适用于各种语言和域的广泛覆盖自动知识库施工。

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