OpenAlex Citation Counts

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OpenAlex is a bibliographic catalogue of scientific papers, authors and institutions accessible in open access mode, named after the Library of Alexandria. It's citation coverage is excellent and I hope you will find utility in this listing of citing articles!

If you click the article title, you'll navigate to the article, as listed in CrossRef. If you click the Open Access links, you'll navigate to the "best Open Access location". Clicking the citation count will open this listing for that article. Lastly at the bottom of the page, you'll find basic pagination options.

Requested Article:

Combination of Deep Learning Models for Student’s Performance Prediction with a Development of Entropy Weighted Rough Set Feature Mining
Sateesh Nayani, Srinivasa Rao P, R. D.
Cybernetics & Systems (2023), pp. 1-43
Closed Access | Times Cited: 4

Showing 4 citing articles:

Framelet-based dual hypergraph neural networks for student performance prediction
Yazhi Yang, Jiandong Shi, Ming Li, et al.
International Journal of Machine Learning and Cybernetics (2024) Vol. 15, Iss. 9, pp. 3863-3877
Closed Access | Times Cited: 3

Improving predictive performance in e-learning through hybrid 2-tier feature selection and hyper parameter-optimized 3-tier ensemble modeling
N S Koti Mani Kumar Tirumanadham, S. Thaiyalnayaki, M. S. Sriram
International Journal of Information Technology (2024) Vol. 16, Iss. 8, pp. 5429-5456
Closed Access | Times Cited: 3

Hybrid interpretable model using roughset theory and association rule mining to detect interaction terms in a generalized linear model
Isaac Kega, Lawrence Nderu, Ronald Waweru Mwangi, et al.
Expert Systems with Applications (2023) Vol. 234, pp. 121092-121092
Closed Access | Times Cited: 7

A Hybrid Framework of Deep Learning Techniques to Predict Online Performance of Learners during COVID-19 Pandemic
Saud Altaf, Rimsha Asad, Shafiq Ahmad, et al.
Sustainability (2023) Vol. 15, Iss. 15, pp. 11731-11731
Open Access | Times Cited: 3

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