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Innovations on Bayesian Approaches of Software Cost Estimation Model

机译:贝叶斯软件成本估算模型的创新

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Objectives: To find Large Software Products Cost Estimation Model by using Bayesian Approaches. Methods/Statistical Analysis: Composite strategy for building programming models in view of a blend of information and master judgment is tried here. This system depends on the surely knew and generally acknowledged Bayes’ hypothesis that has been effectively connected in other building areas incorporating to some degree in the product unwavering quality designing space. Be that as it may, the Bayesian methodology has not been viably misused for building more powerful programming estimation models that utilization a change adjusted blend of undertaking information and master judgment. The center of this paper is to demonstrate the change in precision of the cost estimation model when the Bayesian methodology is utilized versus the numerous relapse approach. Findings: We employed Bayesian model aligned utilizing a dataset of 100 datapoints approved on a dataset of 200 datapoints (sample data), it yields an expectation exactness of PRED(.30) = 76% (i.e., 106 or 76% of the 200 datapoints are evaluated inside 29.5% of the actuals). The immaculate relapse based model aligned utilizing 100 datapoints when accepted on the same 200 task dataset yields a poorer precision of PRED(.30) = 53.4%. Application/Improvements: This Paper Very Advanced Approach for Large Industrial Software Products.
机译:目标:使用贝叶斯方法找到大型软件产品成本估算模型。方法/统计分析:此处尝试了综合信息和主观判断来构建编程模型的复合策略。该系统依赖于贝叶斯的假设,该假设已在其他建筑区域有效地联系在一起,并在某种程度上融入了产品坚定不移的质量设计空间。尽管如此,贝叶斯方法并没有被合理地误用于建立更强大的编程估算模型,该模型利用变更调整后的承接信息和主观判断的组合。本文的中心是要证明使用贝叶斯方法与大量重复方法相比,成本估算模型精度的变化。结论:我们采用贝叶斯模型,该模型利用在200个数据点(样本数据)的数据集上批准的100个数据点的数据集进行对齐,得出的期望准确度为PRED(.30)= 76%(即200个数据点的106或76%)被评估为实际值的29.5%)。当在相同的200个任务数据集上接受时,利用100个数据点对齐的基于无瑕疵复发的模型会产生较差的PRED(.30)= 53.4%。应用/改进:本文是针对大型工业软件产品的非常先进的方法。

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