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Semi-automatic selection of primary studies in systematic literature reviews: is it reasonable?

机译:在系统文献综述中半自动选择基础研究:是否合理?

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摘要

The systematic review (SR) is a methodology used to find and aggregate all relevant existing evidence about a specific research question of interest. One of the activities associated with the SR process is the selection of primary studies, which is a time consuming manual task. The quality of primary study selection impacts the overall quality of SR. The goal of this paper is to propose a strategy named "Score Citation Automatic Selection" (SCAS), to automate part of the primary study selection activity. The SCAS strategy combines two different features, content and citation relationships between the studies, to make the selection activity as automated as possible. Aiming to evaluate the feasibility of our strategy, we conducted an exploratory case study to compare the accuracy of selecting primary studies manually and using the SCAS strategy. The case study shows that for three SRs published in the literature and previously conducted in a manual implementation, the average effort reduction was 58.2 % when applying the SCAS strategy to automate part of the initial selection of primary studies, and the percentage error was 12.98 %. Our case study provided confidence in our strategy, and suggested that it can reduce the effort required to select the primary studies without adversely affecting the overall results of SR.
机译:系统评价(SR)是一种用于查找和汇总有关特定研究兴趣的所有相关现有证据的方法。与SR过程相关的活动之一是选择基础研究,这是一项耗时的手动任务。初步研究选择的质量会影响SR的整体质量。本文的目的是提出一种名为“分数引文自动选择”(SCAS)的策略,以使部分主要研究选择活动自动化。 SCAS策略结合了两个不同的功能,即研究之间的内容和引用关系,以使选择活动尽可能自动化。为了评估我们策略的可行性,我们进行了探索性案例研究,以比较手动选择主要研究和使用SCAS策略的准确性。案例研究表明,对于文献中发表的,先前以人工方式实施的三个SR,应用SCAS策略使部分初选研究自动化时,平均工作量减少了58.2%,百分比误差为12.98% 。我们的案例研究为我们的策略提供了信心,并建议它可以减少选择主要研究所需的工作,而不会对SR的总体结果产生不利影响。

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