Machine Learning-Based Approach for Identifying Research Gaps: COVID-19 as a Case Study.
Alaa Ali Abd-AlrazaqAbdulqadir Jeprel NashwanZubair ShahAhmad A AbujaberDari AlhuwailJens SchneiderRawan AlSaadHazrat AliWaleed AlomoushArfan AhmedSarah AzizPublished in: JMIR formative research (2024)
The proposed machine learning-based approach has the potential to identify research gaps in scientific literature. This study is not intended to replace individual literature research within a selected topic. Instead, it can serve as a guide to formulate precise literature search queries in specific areas associated with research questions that previous publications have earmarked for future exploration. Future research should leverage an up-to-date list of studies that are retrieved from the most common databases in the target area. When feasible, full texts or, at minimum, discussion sections should be analyzed rather than limiting their analysis to abstracts. Furthermore, future studies could evaluate more efficient modeling algorithms, especially those combining topic modeling with statistical uncertainty quantification, such as conformal prediction.