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Empirical analysis on productivity prediction and locality for use case points method

机译:利用案例点法生产性预测与局部性的实证分析

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摘要

Use case points (UCP) method has been around for over two decades. Although there was a substantial criticism concerning the algebraic construction and factor assessment of UCP, it remains an efficient early size estimation method. Predicting software effort from UCP is still an ever-present challenge. The earlier version of UCP method suggested using productivity as a cost driver, where fixed or a few pre-defined productivity ratios have been widely agreed. While this approach was successful when not enough historical data is available, it is no longer acceptable because software projects are different in terms of development aspects. Therefore, it is better to understand the relationship between productivity and other UCP variables. This paper examines the impact of data locality approaches on productivity and effort prediction from multiple UCP variables. The environmental factors are used as partitioning factors to produce local homogeneous data either based on their influential levels or using clustering algorithms. Different machine learning methods, including solo and ensemble methods, are used to construct productivity and effort prediction models based on the local data. The results demonstrate that the prediction models that are created based on local data surpass models that use entire data. Also, the results show that conforming to the hypothetical assumption between productivity and environmental factors is not necessarily a requirement for the success of locality.
机译:使用案例点(UCP)方法已经存在超过二十年。虽然关于UCP的代数建设和因子评估存在重大批评,但它仍然是一种有效的早期估计方法。预测来自UCP的软件努力仍然是一个永远存在的挑战。早期版本的UCP方法建议使用生产力作为成本驱动因素,其中固定或少数预先义的生产率比已被广泛同意。虽然这种方法是成功的,但是当没有足够的历史数据时,它不再可接受,因为软件项目在开发方面不同。因此,更好地了解生产力和其他UCP变量之间的关系。本文介绍了数据局域能途径对多UCP变量的生产力和精力预测的影响。环境因素用作基于其有影响力的水平或使用聚类算法产生局部均匀数据的分区因素。不同的机器学习方法包括独奏和集合方法,用于构建基于本地数据的生产力和精力预测模型。结果表明,基于使用整个数据的本地数据超越模型创建的预测模型。此外,结果表明,符合生产率与环境因素之间的假设假设不一定是局部成功的要求。

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