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Software reusability metrics prediction by using evolutionary algorithms: The interactive mobile learning application RozGaar

机译:使用进化算法的软件可重用性指标预测:交互式移动学习应用程序RozGaar

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Considering object oriented program based software metrics (cohesion, coupling and complexity) and their significance to characterize software quality, particularly software component reusability, we have considered six important CK matrices. The predominant reason behind using the measurement technique is the individual relationship with the design aspect and fault-proneness or aging-proneness. The key objective of this paper is to generate employment opening to thousands of people who have different skillsets and furthermore to provide hassle-free services by RozGaar service providers to customers with the help of machine learning techniques. In the current century’s rapid growth of modernization and automation, manual labor is reduced which gives rise to unemployment at mass. If we need technicians, workers, plumbers or drivers who work on daily wages, it is quite difficult to find one in our locality without having any contact references and knowing the quality of the work they provide. This paper helps in filling the gap between the various customers and the service providers. We aim to introduce this paper as an ocean of opportunities for all where people can get jobs on a daily basis and can earn money for their skills. The used application is a dual-platform application that runs on Android devices and on Internet as a website, promising you to provide unmatched services of daily work. To achieve the goal, we used the novel software prediction model, evolutionary algorithms such as decision tree, Rough Set, and Logistic Regression algorithms, to predict software reusability.
机译:考虑到基于面向对象程序的软件度量标准(内聚性,耦合性和复杂性)及其对表征软件质量(尤其是软件组件可重用性)的重要性,我们考虑了六个重要的CK矩阵。使用测量技术的主要原因是与设计方面和故障倾向性或老化倾向的个体关系。本文的主要目标是为成千上万具有不同技能的人们提供就业机会,并且借助机器学习技术,由RozGaar服务提供商向客户提供无忧服务。在本世纪现代化和自动化的快速发展中,体力劳动的减少导致大量失业。如果我们需要以日薪工作的技术人员,工人,水管工或司机,那么在没有任何联系方式且不了解其提供的工作质量的情况下,很难在我们所在的地区找到一个人。本文有助于填补各种客户与服务提供商之间的空白。我们旨在将本文介绍为所有人都有机会的海洋,在那里人们可以每天获得工作并可以通过其技能赚钱。使用的应用程序是一个双平台应用程序,可在Android设备和Internet上作为网站运行,保证为您提供无与伦比的日常服务。为了实现该目标,我们使用了新颖的软件预测模型,决策树,粗糙集和Logistic回归算法等进化算法来预测软件的可重用性。

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