A Novel Binary Search Tree Method to Find an Item Using Scaling

Praveen Pappula
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Abstract

This Approach comprises of methods to produce novel and efficient methods to implement search of data objects in various applications. It is based on the best match search to implement proximity or best match search over complex or more than one data source. In particular with the availability of very large numeric data set in the present day scenario. The proposed approach which is based on the Arithmetic measures or distance measures called as the predominant Mean based algorithm. It is implemented on the longest common prefix of data object that shows how it can be used to generate various clusters through combining or grouping of data, as it takes O(log n) computational time. And further the approach is based on the process of measuring the distance which is suitable for a hierarchy tree property for proving the classification is needed one for storing or accessing or retrieving the information as required. The results obtained illustrates overall error detection rates in generating the clusters and searching the key value for Denial of Service (DOS) attack 5.15%, Probe attack 3.87%, U2R attack 8.11% and R2L attack 11.14%. as these error detection rates denotes that our proposed algorithm generates less error rates than existing linkage methods.
一种基于缩放的二叉搜索树查找方法
该方法包括产生新颖有效的方法来实现各种应用程序中数据对象的搜索的方法。它基于最佳匹配搜索来实现对复杂或多个数据源的接近或最佳匹配搜索。特别是在目前的情况下,非常大的数字数据集的可用性。该方法基于算术度量或距离度量,称为优势均值算法。它是在数据对象的最长公共前缀上实现的,显示了如何使用它通过组合或分组数据来生成各种集群,因为它需要O(log n)计算时间。此外,该方法基于测量距离的过程,该过程适合于层次树的属性来证明分类是必要的,适合于存储或访问或检索所需的信息。结果表明,在DOS攻击、Probe攻击、U2R攻击和R2L攻击中,生成聚类和搜索关键值的总体检测错误率分别为5.15%、3.87%、8.11%和11.14%。由于这些错误检测率表明我们提出的算法比现有的链接方法产生更少的错误率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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