期刊文献+

关于数据流上发布订阅空间文本相似度的研究

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摘要 随着移动网络和智能手机的高速发展,位置感知发布/订阅系统最近吸引了重要的关注,与传统的基于内容的发布/订阅不同。论文使用Python语言用Py Charm语言编程软件,参数化订阅者的订阅与用户发布,在Windows的控制面板中的Dos程序命令符中进行执行。同时引用了欧式距离矩阵,Jaccard系数,计算空间文本的相似度。
出处 《福建电脑》 2018年第8期1-3,共3页 Journal of Fujian Computer
基金 江西省自然科学基金面上项目 20161BAB202036 云环境下的高效发布订阅方法研究
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