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Mining Outlier Data in Mobile Internet-Based Large Real-Time Databases

机译:基于移动互联网的大型实时数据库中的挖掘异常数据

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摘要

Mining outlier data guarantees access security and data scheduling of parallel databases and maintains high-performance operation of real-time databases. Traditional mining methods generate abundant interference data with reduced accuracy, efficiency, and stability, causing severe deficiencies. This paper proposes a new mining outlier data method, which is used to analyze real-time data features, obtain magnitude spectra models of outlier data, establish a decisional-tree information chain transmission model for outlier data in mobile Internet, obtain the information flow of internal outlier data in the information chain of a large real-time database, and cluster data. Upon local characteristic time scale parameters of information flow, the phase position features of the outlier data before filtering are obtained; the decision-tree outlier-classification feature-filtering algorithm is adopted to acquire signals for analysis and instant amplitude and to achieve the phase-frequency characteristics of outlier data. Wavelet transform threshold denoising is combined with signal denoising to analyze data offset, to correct formed detection filter model, and to realize outlier data mining. The simulation suggests that the method detects the characteristic outlier data feature response distribution, reduces response time, iteration frequency, and mining error rate, improves mining adaptation and coverage, and shows good mining outcomes.
机译:挖掘异常数据保证并行数据库的访问安全性和数据调度,并保持实时数据库的高性能操作。传统的挖掘方法通过降低的精度,效率和稳定性产生丰富的干扰数据,从而导致严重的缺陷。本文提出了一种新的采矿异常数据方法,用于分析实时数据特征,获取异常数据的幅度谱模型,为移动互联网中的异常数据建立决策树信息链传输模型,获取信息流程大型实时数据库信息链中的内部异常数据和群集数据。在信息流的局部特征时间尺度参数时,获得了滤波前的异常数据的相位位置特征;采用决策树异常分类特征滤波算法来获取分析和瞬间幅度的信号,并实现异常数据的相位频率特性。小波变换阈值去噪与信号去噪结合以分析数据偏移,以纠正形成的检测滤波器模型,并实现异常数据挖掘。仿真表明,该方法检测到特征异常数据特征响应分布,减少响应时间,迭代频率和采矿错误率,提高采矿适应和覆盖,并显示出良好的采矿成果。

著录项

  • 来源
    《Complexity》 |2018年第2期|共12页
  • 作者单位

    Cent South Univ China Sch Business Changsha 410083 Hunan Peoples R China;

    Cent South Univ China Sch Business Changsha 410083 Hunan Peoples R China;

    Cent South Univ China Sch Business Changsha 410083 Hunan Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 大系统理论;
  • 关键词

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