时序图的语义查询应答

L. Ferres, M. Dumontier, N. Villanueva-Rosales
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引用次数: 8

摘要

统计图是一种普遍存在的数据可视化机制,大多数(如果不是全部的话)企业都通过统计图来传递信息。然而,许多图被存储为非结构化图像或专有二进制对象,这使得它们很难在嵌入它们的报告之外使用。虽然可以将图映射到更常见的XML表示,但这些图缺乏表达性语义,无法发现关于它们的新知识或回答不同粒度级别的查询。本文描述了一种OWL本体,便于统计图数据的表示、交换、推理和查询应答。我们说明了使用本体论方法来发现和查询时间序列统计图的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic Query Answering with Time-Series Graphs
Statistical graphs are ubiquitous mechanisms for data visualization such that most, if not all, enterprises communicate information through them. However, many graphs are stored as unstructured images or proprietary binary objects, making them difficult to work with beyond the reports in which they are embedded. While graphs can be mapped to more common XML representations, these lack expressive semantics to discover new knowledge about them or to answer queries at various levels of granularity. This paper describes an OWL ontology that facilitates the representation, exchange, reasoning and query answering of statistical graph data. We illustrate the advantages of using an ontological approach to discover and query about time-series statistical graphs.
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