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Machine Learning Based Effort Estimation Using Standardization

机译:使用标准化的基于机器学习的工作量估计

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Accurate estimations of software project effort is one of the most important tasks of software project development. The machine learning models have proven to provide high accuracy due to the learning natures of these techniques. Taking this into consideration, this paper aims at employing machine learning models of Random Forest (RF), Multilayer Perceptron (MLP) and Support Vector Machines (SVM) for purpose of predicting the effort. The Use Case Points (UCP) software size metric is used due to its advantage of providing estimation at initial stages of software development. The standardization preprocessing technique was applied on the dataset before training the models. The RF, MLP and SVM models were examined for the prediction accuracy. The experimental results obtained from RF model were better as compared to MLP and SVM.
机译:准确估算软件项目的工作量是软件项目开发的最重要任务之一。由于这些技术的学习性质,已证明机器学习模型可提供高精度。考虑到这一点,本文旨在采用随机森林(RF),多层感知器(MLP)和支持向量机(SVM)的机器学习模型来预测工作量。使用用例点(UCP)软件大小度量标准是因为它具有在软件开发的初始阶段提供估计的优势。在训练模型之前,将标准化预处理技术应用于数据集。检查了RF,MLP和SVM模型的预测准确性。与MLP和SVM相比,从RF模型获得的实验结果更好。

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