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Managing data in SVM supervised algorithm for data mining technology

机译:在数据挖掘技术的SVM监督算法中管理数据

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Data mining techniques are the result of a long process of research and product development. Data mining is the practice of automatically searching large stores of data to discover patterns and trends that go beyond simple analysis. Data mining uses sophisticated mathematical algorithms to segment the data and evaluate the probability of future events of real world problems. Each Data Mining model is produced by a specific algorithm. Some Data Mining problems can best be solved by using more than one algorithm. Support Vector Machines, a powerful algorithm based on statistical learning theory. Oracle Data mining implements Support Vector Machines for classification, regression, and anomaly detection. It also provides the scalability and usability that are needed in a production quality data mining system. This paper introduces and analyses SVM supervised algorithm, which will help to fresh researchers to understand the tuning, diagnostics & data preparation process and advantages of SVM in Oracle Data Mining. SVM can model complex, real-world problems such as text and image classification, hand-writing recognition, and bioinformatics and biosequence analysis.
机译:数据挖掘技术是长期研究和产品开发过程的结果。数据挖掘是一种自动搜索大型数据存储以发现超出简单分析范围的模式和趋势的实践。数据挖掘使用复杂的数学算法对数据进行分段,并评估现实世界中问题将来发生的可能性。每个数据挖掘模型都是由特定算法生成的。某些数据挖掘问题可以通过使用不止一种算法来最好地解决。支持向量机,一种基于统计学习理论的强大算法。 Oracle数据挖掘实现了支持向量机,用于分类,回归和异常检测。它还提供了生产质量数据挖掘系统所需的可伸缩性和可用性。本文介绍并分析了SVM监督算法,这将有助于新的研究人员了解SVM的调优,诊断和数据准备过程以及SVM在Oracle数据挖掘中的优势。 SVM可以对复杂的现实问题建模,例如文本和图像分类,手写识别以及生物信息学和生物序列分析。

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