Reproducibility and Data Storage for Active Learning-Aided Systematic Reviews

Publication date

2024-05

Authors

Lombaers, PeterISNI 0000000524129973
Bruin, Jonathan DeORCID 0000-0002-4297-0502ISNI 000000051803672X
van de Schoot, RensISNI 0000000393562696

Editors

Advisors

Supervisors

Document Type

Article
Open Access logo

License

cc_by

Abstract

Featured Application: Increasing reproducibility for active learning-aided systematic screening is essential and our checklist can be used to evaluate reproducibility and data efficiency of software. In the screening phase of a systematic review, screening prioritization via active learning effectively reduces the workload. However, the PRISMA guidelines are not sufficient for reporting the screening phase in a reproducible manner. Text screening with active learning is an iterative process, but the labeling decisions and the training of the active learning model can happen independently of each other in time. Therefore, it is not trivial to store the data from both events so that one can still know which iteration of the model was used for each labeling decision. Moreover, many iterations of the active learning model will be trained throughout the screening process, producing an enormous amount of data (think of many gigabytes or even terabytes of data), and machine learning models are continually becoming larger. This article clarifies the steps in an active learning-aided screening process and what data is produced at every step. We consider what reproducibility means in this context and we show that there is tension between the desire to be reproducible and the amount of data that is stored. Finally, we present the RDAL Checklist (Reproducibility and Data storage for Active Learning-Aided Systematic Reviews Checklist), which helps users and creators of active learning software make their screening process reproducible.

Keywords

active learning, data storage, meta-analysis, open science, reproducibility, systematic review, transparency, General Materials Science, Instrumentation, General Engineering, Process Chemistry and Technology, Computer Science Applications, Fluid Flow and Transfer Processes

Citation

Lombaers, P, de Bruin, J & van de Schoot, R 2024, 'Reproducibility and Data Storage for Active Learning-Aided Systematic Reviews', Applied Sciences, vol. 14, no. 9, 3842. https://doi.org/10.3390/app14093842