Error Detection and Correction Code Using Density-based Clustering Algorithm

Sara Salama, Rashed K. Salem, H. Abdel-Kader
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引用次数: 1

Abstract

In data area, to achieve good information for decision making, suitable processing of data is needed. Data need to be transferred. They are transferred as a vector which contains features of data. During data transferring, errors may occur. Errors change the features of data vector (instance). In this case, error detection and correction techniques are needed to tackle this issue. If data transferred as groups based on its features, any change in the features of any vector will change the group (cluster) of this vector. So, to cluster an incomprehensible data for operating any method of data mining, an influential technique is needed, and this technique should ensure the correctness of the cluster using error detection and correction codes like Hamming and Golay. This paper presents a technique to detect and correct clustered data after the transfer process to reduce the misclustered instances. The main concept is the reemploying the error-correction Golay code with splitting of the data word and code word to symbols. DENCLUE clustering algorithm is used in the step of clustering as density-based clustering algorithm. Comparison with other related works is performed and the simulation results stated that the proposed technique achieved better performance.
基于密度聚类算法的码错检测与纠错
在数据领域,为了获得良好的决策信息,需要对数据进行适当的处理。需要传输数据。它们作为包含数据特征的矢量传输。在数据传输过程中,可能会出现错误。错误会改变数据向量(实例)的特征。在这种情况下,需要错误检测和纠正技术来解决这个问题。如果数据根据其特征分组传输,则任何向量的特征的任何变化都会改变该向量的组(簇)。因此,要想对一个难以理解的数据进行聚类,以进行任何数据挖掘方法的操作,都需要一种有影响力的技术,这种技术应该使用错误检测和纠错码(如Hamming和Golay)来确保聚类的正确性。本文提出了一种在数据传输过程后检测和纠正聚类数据的技术,以减少聚类错误。其主要思想是通过将数据字和码字拆分为符号来重新使用纠错的Golay码。聚类步骤采用DENCLUE聚类算法作为基于密度的聚类算法。与其他相关工作进行了比较,仿真结果表明,该技术取得了更好的性能。
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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