Analysis of Software Sizing and Project Estimation prediction by Machine Learning Classification

A. Sathesh, Y. B. Hamdan
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引用次数: 3

Abstract

In this study, the outcomes of trials with various projects are analyzed in detail. Estimators may decrease mistakes by combining several estimating strategies, which helps them maintain a close eye on the difference between their estimations and reality. An effort estimate is a method for estimating a model's correctness by calculating the total amount of effort needed. It's a major pain in the backside of software development. Several prediction methods have recently been created to find an appropriate estimate. The suggested SVM approach is utilized to reduce the estimation error for the project estimate to the lowest possible value. As a result, throughout the software sizing process, the ideal or exact forecast is achieved. Early in a model's development, the estimate is erroneous since the needs are not defined, but as the model evolves, it becomes more and more accurate. Because of this, it is critical to choose a precise estimate for each software model development. Observations and suggestions for further study of software sizing approaches are also included in the report.
基于机器学习分类的软件规模分析和项目估计预测
在本研究中,详细分析了不同项目的试验结果。评估人员可以通过组合几种评估策略来减少错误,这有助于他们密切关注评估与现实之间的差异。工作量估计是一种通过计算所需工作量来估计模型正确性的方法。这是软件开发背后的一大痛苦。最近已经创建了几种预测方法来找到适当的估计。利用建议的支持向量机方法将项目估计的估计误差降低到尽可能低的值。因此,在整个软件尺寸确定过程中,可以实现理想或准确的预测。在模型开发的早期,由于没有定义需求,估计是错误的,但是随着模型的发展,它变得越来越准确。因此,为每个软件模型开发选择一个精确的估计是至关重要的。报告中还包括对进一步研究软件规模确定方法的意见和建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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