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Mining the (data) bank

机译:挖掘(数据)银行

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摘要

Data mining is the process of discovering meaningful new correlations, patterns, and trends by sifting through large amounts of data stored in repositories, using pattern recognition as well as statistical and mathematical techniques. Many tasks can be accomplished with data mining: classification, forecasting, clustering, deviation detection, description, visualization, and link analysis. In this article the unsupervised method was used. The analysis was done by different methods such as windowing, time series, and clustering, which were subsets of the segmentation family. A pattern can be a complicated nonlinear relationship between two variables. Each data-mining technique that could detect this pattern was named as the pattern recognition method. To discover knowledge from raw data, the analyzer program used mathematical functions such as mean, sum, smooth, and normalizes. To attain a more profitable program, the computer program was designed to be applicable to other similar data banks.
机译:数据挖掘是使用模式识别以及统计和数学技术,通过筛选存储在存储库中的大量数据来发现有意义的新关联,模式和趋势的过程。数据挖掘可以完成许多任务:分类,预测,聚类,偏差检测,描述,可视化和链接分析。在本文中,使用了无监督方法。该分析是通过不同的方法(例如窗口化,时间序列和聚类)完成的,这些方法是细分族的子集。模式可以是两个变量之间的复杂非线性关系。每种可以检测到这种模式的数据挖掘技术都称为模式识别方法。为了从原始数据中发现知识,分析器程序使用了数学函数,例如均值,求和,平滑和归一化。为了获得更有利可图的程序,计算机程序被设计为适用于其他类似的数据库。

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