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Proceedings of the ... IEEE Symposium on Computational Intelligence in Healthcare and e-health (CICARE) : ... IEEE Symposium Series on Computational Intelligence (SSCI). IEEE Symposium on Computational Intelligence in Healthcare and e-h...最新文献

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Computational Intelligence in Healthcare 医疗保健中的计算智能
Meenu Gupta, Shakeel Ahmed, Rakesh Kumar, Chadi Altrjman
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引用次数: 2
FDT 2.0: Improving scalability of the fuzzy decision tree induction tool - integrating database storage. FDT 2.0:提高模糊决策树归纳工具的可扩展性——集成数据库存储。
Erin-Elizabeth A Durham, Xiaxia Yu, Robert W Harrison

Effective machine-learning handles large datasets efficiently. One key feature of handling large data is the use of databases such as MySQL. The freeware fuzzy decision tree induction tool, FDT, is a scalable supervised-classification software tool implementing fuzzy decision trees. It is based on an optimized fuzzy ID3 (FID3) algorithm. FDT 2.0 improves upon FDT 1.0 by bridging the gap between data science and data engineering: it combines a robust decisioning tool with data retention for future decisions, so that the tool does not need to be recalibrated from scratch every time a new decision is required. In this paper we briefly review the analytical capabilities of the freeware FDT tool and its major features and functionalities; examples of large biological datasets from HIV, microRNAs and sRNAs are included. This work shows how to integrate fuzzy decision algorithms with modern database technology. In addition, we show that integrating the fuzzy decision tree induction tool with database storage allows for optimal user satisfaction in today's Data Analytics world.

有效的机器学习可以有效地处理大型数据集。处理大数据的一个关键特性是使用MySQL等数据库。免费软件模糊决策树归纳工具FDT是一种可扩展的监督分类软件工具,实现了模糊决策树。它基于一种优化的模糊ID3 (FID3)算法。FDT 2.0通过弥合数据科学和数据工程之间的差距,在FDT 1.0的基础上进行了改进:它将一个强大的决策工具与用于未来决策的数据保留相结合,因此该工具不需要在每次需要新决策时从头开始重新校准。本文简要介绍了自由软件FDT工具的分析能力及其主要特性和功能;包括来自HIV、microrna和srna的大型生物数据集的示例。这项工作展示了如何将模糊决策算法与现代数据库技术相结合。此外,我们表明,在当今的数据分析世界中,将模糊决策树归纳工具与数据库存储集成可以实现最佳的用户满意度。
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引用次数: 10
Semantic interoperability in sensor applications making sense of sensor data 传感器应用中的语义互操作性使传感器数据有意义
Paul Brandt, T. Basten, Sander Stuiik, Vinh T. Bui, P. D. Clercq, L. F. Pires, M. V. Sinderen
Much effort has been spent on the optimization of sensor networks, mainly concerning their performance and power efficiency. Furthermore, open communication protocols for the exchange of sensor data have been developed and widely adopted, making sensor data widely available for software applications. However, less attention has been given to the interoperability of sensor networks and sensor network applications at a semantic level. This hinders the reuse of sensor networks in different applications and the evolution of existing sensor networks and their applications. The main contribution of this paper is an ontology-based approach and architecture to address this problem. We developed an ontology that covers concepts regarding examinations as well as measurements, including the circumstances in which the examination and measurement have been performed. The underlying architecture secures a loose coupling at the semantic level to facilitate reuse and evolution. The ontology has the potential of supporting not only correct interpretation of sensor data, but also ensuring its appropriate use in accordance with the purpose of a given sensor network application. The ontology has been specialized and applied in a remote patient monitoring example, demonstrating the aforementioned potential in the e-health domain.
人们在传感器网络的优化方面做了大量的工作,主要涉及到传感器网络的性能和功率效率。此外,用于交换传感器数据的开放通信协议已经开发并被广泛采用,使传感器数据广泛用于软件应用程序。然而,在语义层面上对传感器网络和传感器网络应用的互操作性关注较少。这阻碍了传感器网络在不同应用中的重用和现有传感器网络及其应用的发展。本文的主要贡献是基于本体的方法和体系结构来解决这个问题。我们开发了一个本体,它涵盖了关于检查和度量的概念,包括执行检查和度量的环境。底层体系结构在语义级别确保松耦合,以促进重用和发展。本体不仅具有支持传感器数据的正确解释的潜力,而且还确保其根据给定传感器网络应用的目的适当使用。该本体已经被专门化并应用于远程患者监测示例中,展示了上述在电子卫生领域的潜力。
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引用次数: 20
期刊
Proceedings of the ... IEEE Symposium on Computational Intelligence in Healthcare and e-health (CICARE) : ... IEEE Symposium Series on Computational Intelligence (SSCI). IEEE Symposium on Computational Intelligence in Healthcare and e-h...
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