Analysis and Prediction of User Editing Patterns in Ontology Development Projects.

Q2 Computer Science
Hao Wang, Tania Tudorache, Dejing Dou, Natalya F Noy, Mark A Musen
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引用次数: 15

Abstract

The development of real-world ontologies is a complex undertaking, commonly involving a group of domain experts with different expertise that work together in a collaborative setting. These ontologies are usually large scale and have complex structures. To assist in the authoring process, ontology tools are key at making the editing process as streamlined as possible. Being able to predict confidently what the users are likely to do next as they edit an ontology will enable us to focus and structure the user interface accordingly and to facilitate more efficient interaction and information discovery. In this paper, we use data mining, specifically the association rule mining, to investigate whether we are able to predict the next editing operation that a user will make based on the change history. We simulated and evaluated continuous prediction across time using sliding window model. We used the association rule mining to generate patterns from the ontology change logs in the training window and tested these patterns on logs in the adjacent testing window. We also evaluated the impact of different training and testing window sizes on the prediction accuracies. At last, we evaluated our prediction accuracies across different user groups and different ontologies. Our results indicate that we can indeed predict the next editing operation a user is likely to make. We will use the discovered editing patterns to develop a recommendation module for our editing tools, and to design user interface components that better fit with the user editing behaviors.

本体开发项目中用户编辑模式的分析与预测
现实世界本体的开发是一项复杂的工作,通常涉及一组具有不同专业知识的领域专家,他们在协作环境中一起工作。这些本体通常规模大,结构复杂。为了协助创作过程,本体工具是使编辑过程尽可能流线型化的关键。能够自信地预测用户在编辑本体时下一步可能做什么,将使我们能够相应地关注和构建用户界面,并促进更有效的交互和信息发现。在本文中,我们使用数据挖掘,特别是关联规则挖掘,来研究我们是否能够根据更改历史预测用户将进行的下一个编辑操作。我们使用滑动窗口模型模拟和评估了跨时间的连续预测。我们使用关联规则挖掘从训练窗口的本体变更日志中生成模式,并在相邻测试窗口的日志上对这些模式进行测试。我们还评估了不同的训练和测试窗口大小对预测精度的影响。最后,我们评估了不同用户组和不同本体的预测精度。我们的结果表明,我们确实可以预测用户可能进行的下一个编辑操作。我们将使用发现的编辑模式为我们的编辑工具开发推荐模块,并设计更适合用户编辑行为的用户界面组件。
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来源期刊
Journal on Data Semantics
Journal on Data Semantics COMPUTER SCIENCE, INFORMATION SYSTEMS-
自引率
0.00%
发文量
0
期刊介绍: The Journal on Data Semantics (JoDS) provides an international high-quality publication venue for researchers whose themes cover issues related to information semantics. Its target domain ranges from theories supporting the formal definition of semantic content to innovative domain-specific applications of semantic knowledge, thus covering work done on conceptual modeling, databases, Semantic Web, information systems, workflow and process modeling, ontologies, business intelligence, interoperability, mobile information services, data warehousing, knowledge representation and reasoning, and artificial intelligence. Topics of relevance to this journal include (but are not limited to): Conceptualization, knowledge representation and reasoning, Conceptual data, process, workflow, and event modeling, Provenance, evolution and change management, Context and context-dependent representations and processing, Multi-model and multi-paradigm approaches, Mappings, transformations, reverse engineering and semantic elicitation, Semantic interoperability, semantic mediators and metadata management, Ontology models and languages, ontology-driven applications, Ontology, schema, data and process integration, reconciliation and alignment, Web semantics and semi-structured data, Integrity description and handling, Semantics in data mining and knowledge extraction, Semantics in business intelligence, analytics and data visualization, Spatial, temporal, multimedia and multimodal semantics, Semantic mobility data and services for mobile users, Supporting tools and applications of semantic-driven approaches.
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