基于aop的软件开发缺陷预测模型的模糊c均值遗传算法和k近邻分类器

Pankaj Kumar
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引用次数: 11

摘要

缺陷的数量通常被认为是软件质量的一个重要指标。众所周知,我们不能回到过去并增加质量。软件质量和可靠性被认为是软件产品最重要的关注点之一。本文简要介绍了面向方面的编程(AOP),并提出了一个预测缺陷的模型。该模型在PROMISE软件工程存储库数据集上使用三种不同类型的方法进行了经验验证。一种是模糊均值聚类(FCM)方法,另一种是k -近邻(KNN)分类器技术,已经在实际数据中进行了验证。第三种是混合方法(即模糊c均值和遗传算法的组合)。数据的性能是根据可靠性、准确性、平均绝对误差(MAE)和均方根误差(RMSE)来评估的。通用术语AOP, AOSD
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Defect Prediction Model for AOP-based Software Development using Hybrid Fuzzy C-Means with Genetic Algorithm and K-Nearest Neighbors Classifier
The number of defects has often been considered a vital indicator of quality of software. It is well known that we cannot go back and add quality. Software Quality and reliability are considered to be one of the most important concerns of software product. In this paper, we give a brief overview of an Aspect-Oriented Programming (AOP) and a model is proposed to predict defects. The model is empirically validated on the PROMISE Software Engineering Repository dataset with three different types of methods. One is Fuzzy CMeans Clustering (FCM) approach and another is K-Nearest Neighbors (KNN) classifier technique, have been performed in real data. Third is a hybrid approach (i.e. combination of fuzzy c-means and genetic algorithms) have been performed. The performance of data is evaluated in terms of Reliability, Accuracy, Mean Absolute Error (MAE), and Root Mean Square Error (RMSE). General Terms AOP, AOSD
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