A ranking-based approach for supporting the initial selection of primary studies in a Systematic Literature Review

Santiago Gonzalez-Toral, Renán Freire, R. Gualán, Víctor Saquicela
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引用次数: 4

Abstract

Traditionally most of the steps involved in a Systematic Literature Review (SLR) process are manually executed, causing inconvenience of time and effort, given the massive amount of primary studies available online. This has motivated a lot of research focused on automating the process. Current state-of-the-art methods combine active learning methods and manual selection of primary studies from a smaller set so they can maximize the finding of relevant papers while at the same time minimizing the number of manually reviewed papers. In this work, we propose a novel strategy to further improve these methods whose early success heavily depends on an effective selection of initial papers to be read by researchers using a PCAbased method which combines different document representation and similarity metric approaches to cluster and rank the content within the corpus related to an enriched representation of research questions within the SLR protocol. Validation was carried out over four publicly available data sets corresponding to SLR studies from the Software Engineering domain. The proposed model proved to be more efficient than a BM25 baseline model as a mechanism to select the initial set of relevant primary studies within the top 100 rank, which makes it a promising method to bootstrap an active learning cycle.
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在系统文献综述中支持初步研究选择的基于排序的方法
传统上,系统文献综述(SLR)过程中涉及的大多数步骤都是手动执行的,由于网上有大量的原始研究,这给时间和精力带来了不便。这激发了许多专注于自动化流程的研究。目前最先进的方法结合了主动学习方法和人工从较小的研究集中选择主要研究,这样他们可以最大限度地找到相关论文,同时最大限度地减少人工审查论文的数量。在这项工作中,我们提出了一种新的策略来进一步改进这些方法,这些方法的早期成功很大程度上取决于研究人员使用基于pcaba的方法有效地选择要阅读的初始论文,该方法结合了不同的文档表示和相似性度量方法,对语料库中与SLR协议中研究问题的丰富表示相关的内容进行聚类和排序。验证是在四个公开可用的数据集上进行的,这些数据集与软件工程领域的单反研究相对应。所提出的模型被证明比BM25基线模型更有效,作为一种机制,在前100名的排名中选择相关的初始研究集,这使得它成为一种有希望的方法来引导主动学习周期。
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