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An approach to predict software project success by cascading clustering and classification

机译:通过级联聚类和分类来预测软件项目成功的方法

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摘要

Generation of successful project is the core challenge of the day. Prediction of software project success is therefore one of the vital activities of software engineering community. Data mining techniques enable one to predict the success of the company by estimating the degree of success of their projects. This paper presents an empirical study of several projects developed at various software industries in order to comprehend the effectiveness of data mining technique for efficient project management. The paper provides K-means clustering approach for grouping of projects based on project success as one of the parameters. Subsequently, different classification algorithms are trained on the result set to build the classifier model based on K-fold cross validation. The best accuracy for the given dataset is achieved in Random Forest algorithm compared to other classifiers. This mode of project management using effective data mining techniques on empirical projects ensures accurate prediction of project success rate of the company. It further reflects process maturity leading towards implementation of strategies for improved productivity and sustainability of the company in the industrial market.
机译:成功项目的产生是当今的核心挑战。因此,预测软件项目的成功是软件工程界的重要活动之一。数据挖掘技术使人们可以通过估计项目的成功程度来预测公司的成功。本文介绍了对在各个软件行业开发的几个项目的实证研究,以了解数据挖掘技术对有效项目管理的有效性。本文基于项目成功作为参数之一,为项目分组提供了K-means聚类方法。随后,在结果集上训练不同的分类算法,以基于K折交叉验证建立分类器模型。与其他分类器相比,Random Forest算法可实现给定数据集的最佳准确性。这种对有效项目使用有效数据挖掘技术的项目管理模式,可以确保准确预测公司的项目成功率。它进一步反映了流程的成熟度,从而导致实施战略以提高公司在工业市场上的生产率和可持续性。

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