油藏工程中使用语义关联预测缺失物源

Jing Zhao, K. Gomadam, V. Prasanna
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引用次数: 17

摘要

作为数据质量的可靠估计,来源正成为一个重要的问题。然而,储层工程领域的物源收集机制往往导致物源信息的缺失。本文研究了储层工程中物源信息缺失的预测问题。基于具有特定语义“连接”的数据项可能共享相同来源的观察,我们的方法使用领域本体中定义的领域实体对数据项进行注释,并将这些“连接”表示为本体图中的关系序列(也称为语义关联)。通过分析带有完整来源信息的带注释的历史数据集,我们捕获了可能暗示相同来源的语义关联。应用统计分析为发现的关联分配置信度值,这表明每个关联在用于未来来源预测时的信任程度。然后,投票算法使用语义关联及其置信度度量来预测缺失的来源信息。我们的评估表明,当三分之一的来源信息缺失时,我们的方法的平均精度在85%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Missing Provenance Using Semantic Associations in Reservoir Engineering
Provenance is becoming an important issue as a reliable estimator of data quality. However, provenance collection mechanisms in the reservoir engineering domain often result in missing provenance information. In this paper, we address the problem of predicting missing provenance information in reservoir engineering. Based on the observation that data items with specific semantic "connections" may share the same provenance, our approach annotates data items with domain entities defined in a domain ontology, and represent these "connections" as sequences of relationships (also known as semantic associations) in the ontology graph. By analyzing annotated historical datasets with complete provenance information, we capture semantic associations that may imply identical provenance. A statistical analysis is applied to assign confidence values to the discovered associations, which indicate the trust of each association when it is used for future provenance prediction. The semantic associations, along with their confidence measures, are then used by a voting algorithm to predict the missing provenance information. Our evaluation shows that the average precision of our approach is above 85% when one third of the provenance information is missing.
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