复项在归一化任务的本体结构的向量空间中的表示

Arnaud Ferré, Pierre Zweigenbaum, C. Nédellec
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引用次数: 11

摘要

本文提出了一种用领域本体概念标注文本术语的半监督方法。该方法在本体结构的语义空间中生成复杂术语的连续向量表示。所提出的方法依赖于一种分布式语义方法,该方法为每个提取的项生成初始向量。然后将这些向量嵌入到由本体结构构造的向量空间中。这种嵌入是通过训练一个线性模型来实现的。最后,我们应用距离计算来确定术语向量和概念向量之间的接近度,从而为术语分配本体标签。通过使用本体的概念作为语义标签,我们已经评估了规范化任务的这些表示的质量。术语的规范化是提取文本中包含的部分信息的重要步骤,但生成的向量空间可能会找到其他应用。该方法的性能可与目前标准化任务的性能相媲美,开辟了令人鼓舞的前景。
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Representation of complex terms in a vector space structured by an ontology for a normalization task
We propose in this paper a semi-supervised method for labeling terms of texts with concepts of a domain ontology. The method generates continuous vector representations of complex terms in a semantic space structured by the ontology. The proposed method relies on a distributional semantics approach, which generates initial vectors for each of the extracted terms. Then these vectors are embedded in the vector space constructed from the structure of the ontology. This embedding is carried out by training a linear model. Finally, we apply a distance calculation to determine the proximity between vectors of terms and vectors of concepts and thus to assign ontology labels to terms. We have evaluated the quality of these representations for a normalization task by using the concepts of an ontology as semantic labels. Normalization of terms is an important step to extract a part of the information containing in texts, but the vector space generated might find other applications. The performance of this method is comparable to that of the state of the art for this task of standardization, opening up encouraging prospects.
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