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Systematic literature reviews in software engineering-enhancement of the study selection process using Cohen's Kappa statistic

机译:软件工程中的系统文献综述 - 使用Cohen的Kappa统计数据提高研究选择过程

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Context: Systematic literature reviews (SLRs) rely on a rigorous and auditable methodology for minimizing biases and ensuring reliability. A common kind of bias arises when selecting studies using a set of inclusion/exclusion criteria. This bias can be decreased through dual revision, which makes the selection process more time-consuming and remains prone to generating bias depending on how each researcher interprets the inclusion/exclusion criteria. Objective: To reduce the bias and time spent in the study selection process, this paper presents a process for selecting studies based on the use of Cohen's Kappa statistic. We have defined an iterative process based on the use of this statistic during which the criteria are refined until obtain almost perfect agreement (k>0.8). At this point, the two researchers interpret the selection criteria in the same way, and thus, the bias is reduced. Starting from this agreement, dual review can be eliminated; consequently, the time spent is drastically shortened. Method: The feasibility of this iterative process for selecting studies is demonstrated through a tertiary study in the area of software engineering on works that were published from 2005 to 2018. Results: The time saved in the study selection process was 28% (for 152 studies) and if the number of studies is sufficiently large, the time saved tend asymptotically to 50%. Conclusions: Researchers and students may take advantage of this iterative process for selecting studies when conducting SLRs to reduce bias in the interpretation of inclusion and exclusion criteria. It is especially useful for research with few resources.
机译:背景信息:系统文献评论(SLRS)依靠严格和可审查的方法,以最大限度地减少偏见和确保可靠性。在使用一组包含/排除标准选择研究时出现了一种常见的偏差。通过双重修订可以减少这种偏差,这使得选择过程更加耗时,并且仍然容易地产生偏差,这取决于每个研究人员解释包含/排除标准的方式。目的:减少在研究选择过程中花费的偏差和时间,本文提出了一种基于Cohen的Kappa统计学的研究选择研究的过程。我们已经根据使用本统计数据来定义迭代过程,在此期间将标准精制,直至获得几乎完美的协议(k> 0.8)。此时,这两个研究人员以相同的方式解释选择标准,因此,偏差减小。从本协议开始,可以消除双重审查;因此,花费的时间急剧缩短。方法:通过从2005年至2018年出版的工作领域的软件工程领域的高等学校研究证明了选择研究的可行性。结果:在研究选择过程中节省的时间为28%(152项研究)如果研究的数量足够大,所节约的时间趋于渐近至50%。结论:研究人员和学生可以利用这种迭代过程来选择进行SLR时的研究,以减少包含和排除标准的解释中的偏见。它对少数资源进行研究特别有用。

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