Predicting the Citations of Scholarly Paper

August 10, 2020 ยท Declared Dead ยท ๐Ÿ› J. Informetrics

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Authors Xiaomei Bai, Fuli Zhang, Ivan Lee arXiv ID 2008.05013 Category cs.DL: Digital Libraries Cross-listed cs.SI, physics.soc-ph Citations 114 Venue J. Informetrics Last Checked 1 month ago
Abstract
Citation prediction of scholarly papers is of great significance in guiding funding allocations, recruitment decisions, and rewards. However, little is known about how citation patterns evolve over time. By exploring the inherent involution property in scholarly paper citation, we introduce the Paper Potential Index (PPI) model based on four factors: inherent quality of scholarly paper, scholarly paper impact decaying over time, early citations, and early citers' impact. In addition, by analyzing factors that drive citation growth, we propose a multi-feature model for impact prediction. Experimental results demonstrate that the two models improve the accuracy in predicting scholarly paper citations. Compared to the multi-feature model, the PPI model yields superior predictive performance in terms of range-normalized RMSE. The PPI model better interprets the changes in citation, without the need to adjust parameters. Compared to the PPI model, the multi-feature model performs better prediction in terms of Mean Absolute Percentage Error and Accuracy; however, their predictive performance is more dependent on the parameter adjustment.
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