科学数据分析的基于知识的系统方法和元数据的概念

E. Kapetanios, Ralf Kramer
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引用次数: 3

摘要

在过去几年中,二级和三级存储的大量存储的急剧增长和进步使得处理大量数据(例如,卫星数据、复杂的科学实验等)成为可能。然而,为了充分利用这些进步,用于数据分析和解释的元数据,以及通过智能和有效的方法管理和访问大型数据集的复杂性,仍然被认为是信息科学界在处理大型数据库时面临的主要挑战。科学数据必须由元数据进行分析和解释,元数据对底层数据具有描述性作用。元数据可以部分地根据所考虑的话语领域(例如,大气化学)和要建立的信息系统的概念化来先验地定义。它也可以通过使用学习方法从时间序列测量和观测数据中提取。本文提出了一种基于知识的元数据管理系统(KBMS),用于元数据的提取和管理,以弥合数据与信息之间的鸿沟。KBMS是基于联邦体系结构的智能信息系统的一个组件,还包括用于面向时间序列的数据的数据库管理系统和可视化系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A knowledge-based system approach for scientific data analysis and the notion of metadata
Over the last few years, dramatic increases and advances in mass storage for both secondary and tertiary storage made possible the handling of big amounts of data (for example, satellite data, complex scientific experiments, and so on). However, to the full use of these advances, metadata for data analysis and interpretation, as well as the complexity of managing and accessing large datasets through intelligent and efficient methods, are still considered to be the main challenges to the information-science community when dealing with large databases. Scientific data must be analyzed and interpreted by metadata, which has a descriptive role for the underlying data. Metadata can be, partly, a priori definable according to the domain of discourse under consideration (for example, atmospheric chemistry) and the conceptualization of the information system to be built. It may also be extracted by using learning methods from time-series measurement and observation data. In this paper, a knowledge-based management system (KBMS) is presented for the extraction and management of metadata in order to bridge the gap between data and information. The KBMS is a component of an intelligent information system based upon a federated architecture, also including a database management system for time-series-oriented data and a visualization system.
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