利用 ASReview 筛选语言学习元研究的主要研究:分步教程

Yazhuo Quan, Tetiana Tytko, Bronson Hui
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引用次数: 0

摘要

事实证明,元研究(包括元分析和系统方法学综述)是一种有用的工具,可以通过对特定文献中的数据和方法学特征进行数字总结,从而全面了解研究问题。作为综述程序的一部分,研究人员会选择将纳入其分析的主要研究。然而,这一过程需要大量资源,而且容易出现人为错误。在本教程中,我们将介绍一种名为 ASReview 的人工智能(AI)实际应用,它可以促进筛选过程。我们使用从已发表的荟萃分析中提取的模拟数据集,逐步指导如何将该工具纳入筛选流程。我们介绍了基本步骤,包括数据集的准备、数据集的导入、将研究标注为相关或不相关(纳入或不纳入),以及将结果保存为研究人员的记录,并本着开放科学的精神共享以实现透明。此外,教程还介绍了人工智能辅助筛选过程中需要考虑的基本因素,如停止规则。我们承认该工具的潜在局限性,并为感兴趣的读者提供了一些替代方案。我们的总体目标是通过促进人工智能时代的筛选过程,为推动和促进 SLA 元研究做出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utilizing ASReview in screening primary studies for meta-research in SLA: A step-by-step tutorial

Meta-research, including meta-analyses and systematic methodological reviews, has proven to be a useful tool for obtaining a comprehensive understanding of research questions by numerically summarizing data and methodological features in a given literature. As part of the review procedure, researchers select primary studies to be included in their analysis. However, this process is resource-intensive and prone to human error. In this tutorial, we introduce a practical application of artificial intelligence (AI), known as ASReview, that can facilitate the screening process. Using a simulated data set derived from a published meta-analysis, we offer step-by-step guidance on how to incorporate the tool into the screening process. We cover the essential steps, including the preparation of the data set, the import of the data set, the labeling of the study as relevant or irrelevant (for inclusion or not), as well as the saving of the results for the researcher's record and sharing for transparency in the spirit of open science. In addition, the tutorial addresses essential factors to consider in the AI-aided screening process, such as stopping rules. We acknowledge potential limitations of the tool and provide a couple of alternatives for interested readers. Our overall goal is to contribute to advancing and promoting meta-research in SLA by facilitating the screening process in the era of AI.

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