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Bayesian networks for knowledge discovery in large datasets: basics for nurse researchers.

机译:大型数据集中知识发现网络的贝叶斯网络:护士研究人员的基础知识。

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摘要

The growth of nursing databases necessitates new approaches to data analyses. These databases, which are known to be massive and multidimensional, easily exceed the capabilities of both human cognition and traditional analytical approaches. One innovative approach, knowledge discovery in large databases (KDD), allows investigators to analyze very large data sets more comprehensively in an automatic or a semi-automatic manner. Among KDD techniques, Bayesian networks, a state-of-the art representation of probabilistic knowledge by a graphical diagram, has emerged in recent years as essential for pattern recognition and classification in the healthcare field. Unlike some data mining techniques, Bayesian networks allow investigators to combine domain knowledge with statistical data, enabling nurse researchers to incorporate clinical and theoretical knowledge into the process of knowledge discovery in large datasets. This tailored discussion presents the basic concepts of Bayesian networks and their use as knowledge discovery tools for nurse researchers.
机译:护理数据库的增长需要新的数据分析方法。这些数据库,已知是大规模和多维,容易超过人类认知和传统分析方法的能力。在大型数据库(KDD)中的一种创新方法,知识发现,允许调查人员以自动或半自动方式更全面地分析非常大的数据集。在KDD技术中,近年来,近年来,贝叶斯网络是近年来通过图形图的概率知识的最新代表性,这对于医疗领域的模式识别和分类至关重要。与某些数据挖掘技术不同,贝叶斯网络允许调查人员将域知识与统计数据相结合,使护士研究人员能够将临床和理论知识纳入大型数据集中知识发现过程中的临床和理论知识。这种量身定制的讨论介绍了贝叶斯网络的基本概念及其作为护士研究人员的知识发现工具的基本概念。

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