特殊货物本体的关系表示学习

Vahideh Reshadat, A. Akçay, Kalliopi Zervanou, Yingqian Zhang, Eelco de Jong
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引用次数: 1

摘要

运输有特殊处理需要的货物(特殊货物)的运输过程不透明,导致航空货运业效率低下。特殊货物本体引出、构造和存储领域知识,并以机器可读的格式表示领域概念和它们之间的关系。本文提出了一种面向特殊货物领域的本体填充管道,作为本体填充任务的一部分,我们研究了如何基于行业用例的可用领域数据,从低资源领域中构建高效的信息提取模型。为此,设计了一个模型,用于提取和分类每个概念对之间不同关系类型的实例。该模型基于一种关系表示学习方法,该方法建立在特殊货物领域基于分层注意的多任务体系结构之上。实验结果表明,该模型可以很好地表示领域的复杂语义信息,用这些表示初始化的任务取得了很好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Relation Representation Learning for Special Cargo Ontology
Non-transparent shipping processes of transporting goods with special handling needs (special cargoes) have resulted in inefficiency in the airfreight industry. Special cargo ontology elicits, structures, and stores domain knowledge and represents the domain concepts and relationship between them in a machine-readable format. In this paper, we proposed an ontology population pipeline for the special cargo domain, and as part of the ontology population task, we investigated how to build an efficient information extraction model from low-resource domains based on available domain data for industry use cases. For this purpose, a model is designed for extracting and classifying instances of different relation types between each concept pair. The model is based on a relation representation learning approach built upon a Hierarchical Attention-based Multi-task architecture in the special cargo domain. The results of experiments show that the model could represent the complex semantic information of the domain, and tasks initialized with these representations achieve promising results.
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