ASMaaS: Automatic Semantic Modeling as a Service

Zaiwen Feng, W. Mayer, M. Stumptner, G. Grossmann, Selasi Kwashie, Da Ning, K. He
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引用次数: 1

Abstract

Traditionally the integration of data from multiple sources is done on an ad-hoc basis for each analysis scenario and application. This is an approach that is inflexible, incurs high costs, and leads to “silos” that prevent sharing data across different agencies or tasks. A standard approach to tackling this problem is to design a common ontology and to construct source descriptions which specify mappings between the sources and the ontology. Modeling the semantics of data manually requires huge human cost and expertise, making an automatic method of semantic modeling desired. Automatic semantic model has been gaining attention in data integration [5], federated data query [14] and knowledge graph construction [6]. This paper proposes an service-oriented architecture to create a correct semantic model, including annotating training data, training the machine learning model, and predict an accurate semantic model for new data source. Moreover, a holistic process for automatic semantic modeling is presented. By the usage of ASMaaS, historical semantic annotations for training machine learning model used in automatic semantic modeling can be shared, reducing costs of human resources from users. By specifying a well defined interface, users are able to have access to automatic semantic modeling process at any time, from anywhere. In addition, users must not be concerned with machine learning technologies and pipeline used in automatic semantic modeling, focusing mainly on the business itself.
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自动语义建模即服务
传统上,来自多个数据源的数据集成是在针对每个分析场景和应用程序的特别基础上完成的。这是一种不灵活、成本高、导致“孤岛”的方法,无法在不同的机构或任务之间共享数据。解决这个问题的一个标准方法是设计一个公共本体,并构造源描述,指定源和本体之间的映射。手动对数据的语义建模需要大量的人力成本和专业知识,因此需要一种自动的语义建模方法。自动语义模型在数据集成[5]、联邦数据查询[14]、知识图谱构建[6]等方面得到了广泛的关注。本文提出了一种面向服务的体系结构来创建正确的语义模型,包括对训练数据进行标注、训练机器学习模型以及对新数据源进行准确的语义模型预测。在此基础上,提出了语义自动建模的整体过程。通过使用ASMaaS,可以共享用于自动语义建模的机器学习模型训练的历史语义注释,减少用户的人力资源成本。通过指定定义良好的接口,用户可以随时随地访问自动语义建模过程。此外,用户不能关注自动语义建模中使用的机器学习技术和管道,而应主要关注业务本身。
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