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An evaluation of the statistical convertibility of Function Points into COSMIC Function Points

机译:对功能点到COSMIC功能点的统计可转换性的评估

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摘要

Since the introduction of COSMIC Function Points, the problem of converting historical data measured using traditional Function Points into COSMIC measures have arisen. To this end, several researchers have investigated the possibility of identifying the relationship between the two measures by means of statistical methods. This paper aims at improving statistical convertibility of Function Points into COSMIC Function Points by improving previous work with respect to aspects-like outlier identification and exclusion, model non-linearity, applicability conditions, etc.-which up to now were not adequately considered, with the purpose of confirming, correcting or enhancing current models. Available datasets including software sizes measured both in Function Points and COSMIC Function Points were analyzed. The role of outliers was studied; non linear models and piecewise linear models were derived, in addition to linear models. Models based on transactions only were also derived. Confidence intervals were used throughout the paper to assess the values of the models' parameters. The dependence of the ratio between Function Points and COSMIC Function Points on size was studied. The union of all the available datasets was also studied, to overcome problems due to the relatively small size of datasets. It is shown that outliers do affect the linear models, typically increasing the slope of the regression lines; however, this happens mostly in small datasets: in the union of the available datasets there is no outlier that can influence the model. Conditions for the applicability of the statistical conversion are identified, in terms of relationships that must hold among the basic functional components of Function Point measures. Non-linear models are shown to represent well the relationships between the two measures, since the ratio between COSMIC Function Points and Function Points appears to increase with size. In general, it is confirmed that convertibility can be modeled by different types of models. This is a problem for practitioners, who have to choose one of these models. Anyway, a few practical suggestions can be derived from the results reported here. The model assuming that one FP is equal to one CFP causes the biggest conversion errors observed and is not generally supported. All the considered datasets are characterized by a ratio of transaction to data functions that is fairly constant throughout each dataset: this can be regarded as a condition for the applicability of current models; under this condition non-linear (log-log) models perform reasonably well. The fact that in Function Point Analysis the size of a process is limited, while it is not so in the COSMIC method, seems to be the cause of non linearity of the relationship between the two measures. In general, it appears that the conversion can be successfully based on transaction functions alone, without losing in precision.
机译:自从引入COSMIC功能点以来,就出现了将使用传统功能点测量的历史数据转换为COSMIC度量的问题。为此,一些研究人员研究了通过统计方法确定两种测量之间的关系的可能性。本文旨在通过改进先前在诸如离群值识别和排除,模型非线性,适用性条件等方面的工作来改进功能点到COSMIC功能点的统计可转换性,这些方面到目前为止尚未得到充分考虑,确认,纠正或增强当前模型的目的。分析了可用数据集,包括在功能点和COSMIC功能点中测得的软件大小。研究了异常值的作用;除了线性模型,还导出了非线性模型和分段线性模型。还导出了仅基于交易的模型。本文通篇使用置信区间来评估模型参数的值。研究了功能点和COSMIC功能点之间的比例与尺寸的关系。还研究了所有可用数据集的并集,以克服由于数据集相对较小而引起的问题。结果表明,离群值确实会影响线性模型,通常会增加回归线的斜率。但是,这主要发生在小型数据集中:在可用数据集的并集中,没有异常值会影响模型。根据功能点度量的基本功能组件之间必须保持的关系,确定了统计转换适用性的条件。由于COSMIC功能点和功能点之间的比例似乎随着尺寸的增加而增加,因此非线性模型可以很好地表示这两个度量之间的关系。通常,已确认可以通过不同类型的模型对可转换性进行建模。这对于必须选择这些模型之一的从业者是个问题。无论如何,可以从此处报告的结果中得出一些实用建议。假设一个FP等于一个CFP的模型会导致观察到最大的转换误差,并且通常不受支持。所有考虑的数据集的特征是事务与数据函数的比率在每个数据集中都相当恒定:这可以视为当前模型适用性的条件;在这种情况下,非线性(对数-对数)模型表现良好。在功能点分析中,虽然过程的大小受到限制,而在COSMIC方法中却没有,但实际上这是两个度量之间关系非线性的原因。通常,似乎可以仅基于事务功能成功完成转换,而不会降低精度。

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