基于四叉树的蓬松c均值聚类算法的故障预测编程

S. Ravichandran, M. Umamaheswari, R. Benjohnson
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引用次数: 0

摘要

利用具有过去编程形式的软件度量和责任信息来构建产品后续到达的产品责任期望显示。像群集这样的无监督过程可以作为编程模块的一部分用于责备期望,在无法访问责备标记的情况下更是如此。本文提出了一种基于四叉树的模糊c均值计算方法来预测程序模块的不足。本文的观点是双重的。首先,连接四叉树以观察底层组焦点,从而为模糊c均值算法做出贡献。信息边缘参数监督入门组焦点的数量,并通过移动限制客户端可以创建所需的起始组焦点。与其他安装程序相比,利用分组增加的思想来确定束的性质,以评估基于四叉树的引入计算。通过基于四叉树的计算得到的这些束被发现具有最极端的拾取品质。其次,结合基于四叉树的计算来预测程序模块的不足。这种预测方法的一般错误率与其他现有的计算方法进行了对比,并且在绝大多数情况下观察到更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Programming Fault Prediction Using Quad Tree-Based Fluffy C-Means Clustering Algorithm
Software measurements and blame information having a place with a past programming form are utilized to construct the product blame expectation show for the following arrival of the product. Unsupervised procedures like bunching might be utilized for blame expectation as a part of programming modules, all the more so in those situations where blame marks are not accessible. In this paper a Quad Tree-based Fuzzy C-Means calculation has been connected for anticipating deficiencies in program modules. The points of this paper are twofold. In the first place, Quad Trees are connected for observing the underlying group focuses to be contribution to the Fuzzy C-Means Algorithm. An information edge parameter oversees the quantity of introductory bunch focuses and by shifting the limit the client can create wanted beginning group focuses. The idea of grouping increase has been utilized to decide the nature of bunches for assessment of the Quad Tree-based introduction calculation when contrasted with other instatement procedures. These bunches got by Quad Tree-based calculation were found to have most extreme pick up qualities. Second, the Quad Tree based calculation is connected for anticipating shortcomings in program modules. The general blunder rates of this forecast approach are contrasted with other existing calculations and are observed to be better in the vast majority of the cases.
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