Can Machine Learning Support the Selection of Studies for Systematic Literature Review Updates?
收藏NIAID Data Ecosystem2026-05-02 收录
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https://zenodo.org/record/14063836
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资源简介:
Artifacts for "Can Machine Learning Support the Selection of Studies for Systematic Literature Review Updates?".
File used to answer RQ1:
RQ1-RF-predictions.csv
RQ1-RQ3-best-configuration-RF.csv
File used to answer RQ2:
RQ2-SVM-predictions.csv
RQ2-best-configuration-SVM.csv
File used to answer RQ3:
RQ3-RF-normalized-predictions.csv
RQ1-RQ3-best-configuration-RF.csv
The file assessment-team-votes.csv contains the title of each study, a bolean indicating if it was included or not and the individual marks of each reviewer before applying the agreement criteria.
The .bib files used in our experiment are available at:
Our testing set: 'Testing set - Excluded.bib' (513 studies) and 'Testing set - Included.bib' (38 studies). All of the 551 studies we used, were obtained from the actual SLR Update
Our training set: 'Training set - Excluded.bib' (83 studies - obtained by performing the backward snowballing using the Original SLR) and 'Training set - Included.bib' (45 studies - all studies that were included in the Original SLR).
All of our code is available in the .zip file. Besides our pipeline, there's also some jupyter notebooks in code/analysis showing illustrating how we answered each of our questions.
创建时间:
2024-11-11



