Ontology Alignment is an important research problem applied to various fields such as data integration, data transfer, data preparation, etc. State-of-the-art (SOTA) Ontology Alignment systems typically use naive domain-dependent approaches with handcrafted rules or domain-specific architectures, making them unscalable and inefficient. In this work, we propose VeeAlign, a Deep Learning based model that uses a novel dual-attention mechanism to compute the contextualized representation of a concept which, in turn, is used to discover alignments. By doing this, not only is our approach able to exploit both syntactic and semantic information encoded in ontologies, it is also, by design, flexible and scalable to different domains with minimal effort. We evaluate our model on four different datasets from different domains and languages, and establish its superiority through these results as well as detailed ablation studies. The code and datasets used are available at https://github.com/Remorax/VeeAlign.
翻译:在这项工作中,我们提出了基于深层次学习的模型VeeAlign,这是一个基于深层学习的模型,它使用一种新型的双重注意机制来计算一个概念的背景描述,而这一概念反过来又被用来发现匹配。通过这样做,我们不仅能够利用在内科编码的合成和语义信息,而且还能够通过设计、灵活和可扩缩到不同领域,尽量少做努力。我们评估了来自不同领域和语言的四个不同数据集的模型,并通过这些结果和详细的缩略图研究确定其优势。使用的代码和数据集可在http://github.com/Remorax/VeeAlign查阅。