用于灾害管理和降低风险的Web服务分类

Abdelouahab Laachemi, D. Boughaci
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引用次数: 1

摘要

灾难是社会功能的中断,可以中断我们生活的基本服务。它对人类、物质、经济和环境都有重要的影响。灾害有自然灾害、环境突发事件和影响健康的传染病等几种。我们需要严肃和重要的资源来减少这些灾害可能造成的风险。因此,重要的是要建立良好的方案,并对应该启动的活动或服务进行分类,以应对灾害。现代技术可以有效地减少灾害造成的损害和风险,特别是在灾害管理中使用Web服务。为此,按域对Web服务进行分类非常有用,有助于在有关当局发生紧急情况或灾难时调用服务。在本文中,我们提出了一种结合了监督学习方法Naïve贝叶斯和随机局部搜索(SLS)的元启发式服务分类方法。SLS用于属性选择,减少了属性的空间。后者被发送到Naïve贝叶斯分类器构建模型。为了评估和度量我们的方法的性能,我们使用了一组364个Web服务,分为四个类别(QWS Dataset)。与以往的工作相比,实验取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Web services classification for disaster management and risk reduction
A disaster is a disruption of the society functioning that can interrupt essential services of our live. It has an important impact on human, material, economic and environment. There a several kind of disaster such as: natural, environmental emergencies and contagious disease that affects health and so on. We need serious and important resources to reduce risk that can be caused by these disasters. So it is important to establish good programs and classify the activities or services that should be launched to handle disasters. Modern technology can be effective in reducing the damage and risk caused by disasters, particularly the use of Web services in disaster management. To this end, the classification of Web services by domain can be very useful to facilitate the services invocation in the event of an emergency or disaster by the concerned authorities. In this paper, we present an approach that combines both a supervised learning method Naïve Bayes and the meta-heuristic of stochastic Local search (SLS) for services classification. SLS is used for attribute selection which reduces the space of attributes. The latter are sent to Naïve Bayes classifier to build models. To evaluate and measure the performance of our approach we used a set of 364 Web services divided into four categories (QWS Dataset). The experiment gives good results compared to other previous works.
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