Can Author Collaboration Reveal Impact? The Case of h-index

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Abstract

Scientific impact has been the center of extended debate regarding its accuracy and reliability. From hiring committees in academic institutions to governmental agencies that distribute funding, an author’s scientific success as measured by h-index is a vital point to their career. The aim of this work is to investigate whether the collaboration patterns of an author are good predictors of the author’s future h-index. Although not directly related to each other, a more intense collaboration can result into increased productivity which can potentially have an impact on the author’s future h-index. In this paper, we capitalize on recent advances in graph neural networks and we examine the possibility of predicting the h-index relying solely on the author’s collaboration and the textual content of a subset of their papers. We perform our experiments on a large-scale network consisting of more than 1 million authors that have published papers in computer science venues and more than 37 million edges. The task is a six-months-ahead forecast, i. e., what the h-index of each author will be after six months. Our experiments indicate that there is indeed some relationship between the future h-index of an author and their structural role in the co-authorship network. Furthermore, we found that the proposed method outperforms standard machine learning techniques based on simple graph metrics along with node representations learnt from the textual content of the author’s papers.

Original languageEnglish
Title of host publicationPredicting the Dynamics of Research Impact
PublisherSpringer International Publishing
Pages177-194
Number of pages18
ISBN (Electronic)9783030866686
ISBN (Print)9783030866679
DOIs
Publication statusPublished - 1 Jan 2021

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