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Novel Machine Learning for Big Data Analytics in Intelligent Support Information Management Systems

机译:用于智能支持信息管理系统中大数据分析的新型机器学习

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Two-dimensiona arrays of bi-component structures made of cobalt and permalloy elliptical dots with thickness of 25 nm, length 1 mm and width of 225 nm, have been prepared by a self-aligned shadow deposition technique. Brillouin light scattering has been exploited to study the frequency dependence of thermally excited magnetic eigenmodes on the intensity of the external magnetic field, applied along the easy axis of the elements. Scientific information technology has been developed rapidly. Here, the purposes are to make people's lives more convenient and ensure information management and classification. The machine learning algorithm is improved to obtain the optimized Light Gradient Boosting Machine (LightGBM) algorithm. Then, an Android-based intelligent support information management system is designed based on LightGBM for the big data analysis and classification management of information in the intelligent support information management system. The system is designed with modules of employee registration and login, company announcement notice, attendance and attendance management, self-service, and daily tools with the company as the subject. Furthermore, the performance of the constructed information management system is analyzed through simulations. Results demonstrate that the training time of the optimized LightGBM algorithm can stabilize at about 100s, and the test time can stabilize at 0.68s. Besides, its accuracy rate can reach 89.24, which is at least 3.6 higher than other machine learning algorithms. Moreover, the acceleration efficiency analysis of each algorithm suggests that the optimized LightGBM algorithm is suitable for processing large amounts of data; its acceleration effect is more apparent, and its acceleration ratio is higher than other algorithms. Hence, the constructed intelligent support information management system can reach a high accuracy while ensuring the error, with apparent acceleration effect. Therefore, this model can provide an experimental reference for information classification and management in various fields.
机译:采用自对准阴影沉积技术制备了厚度为25 nm、长1 mm、宽225 nm的钴和坡莫合金椭圆点组成的双组分结构二维阵列。布里渊光散射已被用于研究热激发磁特征模态对沿元件简单轴施加的外部磁场强度的频率依赖性。科学信息技术发展迅速。在这里,目的是让人们的生活更加方便,并确保信息管理和分类。改进机器学习算法,得到优化的光梯度提升机(LightGBM)算法。然后,针对智能支持信息管理系统中的信息大数据分析和分类管理,设计了基于Android的基于LightGBM的智能支持信息管理系统。系统以公司为主体,设计了员工注册登录、公司公告通知、考勤考勤管理、自助服务、日常工具等模块。此外,通过仿真分析构建的信息管理系统的性能。结果表明,优化后的LightGBM算法的训练时间稳定在100s左右,测试时间稳定在0.68s左右。此外,其准确率可以达到89.24%,至少为3。比其他机器学习算法高 6%。此外,对各算法的加速效率分析表明,优化后的LightGBM算法适用于处理大量数据;其加速效果更为明显,其加速比高于其他算法。因此,所构建的智能支持信息管理系统在保证误差的同时能够达到较高的精度,并具有明显的加速效果。因此,该模型可为各领域的信息分类和管理提供实验参考。

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