Show simple item record

Authorvan Dinter, Raymon
AuthorCatal, Cagatay
AuthorTekinerdogan, Bedir
Available date2022-11-30T11:23:21Z
Publication Date2021
Publication NameExpert Systems with Applications
ResourceScopus
Resource2-s2.0-85107673611
URIhttp://dx.doi.org/10.1016/j.eswa.2021.115261
URIhttp://hdl.handle.net/10576/36808
AbstractThe systematic literature review (SLR) process includes several steps to collect secondary data and analyze it to answer research questions. In this context, the document retrieval and primary study selection steps are heavily intertwined and known for their repetitiveness, high human workload, and difficulty identifying all relevant literature. This study aims to reduce human workload and error of the document retrieval and primary study selection processes using a decision support system (DSS). An open-source DSS is proposed that supports the document retrieval step, dataset preprocessing, and citation classification. The DSS is domain-independent, as it has proven to carefully select an article's relevance based solely on the title and abstract. These features can be consistently retrieved from scientific database APIs. Additionally, the DSS is designed to run in the cloud without any required programming knowledge for reviewers. A Multi-Channel CNN architecture is implemented to support the citation screening process. With the provided DSS, reviewers can fill in their search strategy and manually label only a subset of the citations. The remaining unlabeled citations are automatically classified and sorted based on probability. It was shown that for four out of five review datasets, the DSS's use achieved significant workload savings of at least 10%. The cross-validation results show that the system provides consistent results up to 88.3% of work saved during citation screening. In two cases, our model yielded a better performance over the benchmark review datasets. As such, the proposed approach can assist the development of systematic literature reviews independent of the domain. The proposed DSS is effective and can substantially decrease the document retrieval and citation screening steps' workload and error rate. 2021 The Author(s)
SponsorOpen Access funding provided by the Qatar National Library.
Languageen
PublisherElsevier
SubjectAutomation; Citation screening; Convolutional neural network; Decision support; Deep learning; Document retrieval; Natural language processing; Systematic literature review (SLR)
TitleA decision support system for automating document retrieval and citation screening
TypeArticle
Volume Number182


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record