应对 H 指数的不公平和低效率:跨学科实证分析

IF 4.6 Q1 INFORMATION SCIENCE & LIBRARY SCIENCE
Fabio Zagonari, Paolo Foschi
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引用次数: 0

摘要

本文测量了两个主要的低效特征(许多文章以外的出版物;许多共同作者的相互引用)和两个主要的不公平特征(某些学科的共同作者较多;经验丰富的作者引用较多)。研究基于跨学科平衡样本(2006 年至 2015 年至少有一篇论文被 Scopus 收录的 10,000 名作者)构建了一个具有代表性的数据集。它估算了 H 指数作为自上而下的规定(∆Hh = Hh - Hh+1,从 H1 = 基于出版物到 H5 = 基于文章的年人均净值)的四项额外改进在多大程度上造成了 25 个学科和四个科目的低效和不公平。线性回归和方差分析结果表明,H 指数的单项改进对低效和不公平特征的解释程度显著递减,但使这些特征在不同学科和科目之间具有模糊的可比性,而 H 指数的整体改进(H1-H5)对这些特征的解释程度较低,但使学科和科目之间具有明显的可比性,而且学科之间的可比性大于科目之间的可比性。用最大似然法对每个学科和科目的 H5 进行伽马分布拟合,结果显示,各学科的估计概率密度和 H5 ≥ 1 至 H5 ≥ 3 的作者百分比不同,但各科目相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coping with the Inequity and Inefficiency of the H-Index: A Cross-Disciplinary Empirical Analysis
This paper measures two main inefficiency features (many publications other than articles; many co-authors’ reciprocal citations) and two main inequity features (more co-authors in some disciplines; more citations for authors with more experience). It constructs a representative dataset based on a cross-disciplinary balanced sample (10,000 authors with at least one publication indexed in Scopus from 2006 to 2015). It estimates to what extent four additional improvements of the H-index as top-down regulations (∆Hh = Hh − Hh+1 from H1 = based on publications to H5 = net per-capita per-year based on articles) account for inefficiency and inequity across twenty-five disciplines and four subjects. Linear regressions and ANOVA results show that the single improvements of the H-index considerably and decreasingly explain the inefficiency and inequity features but make these vaguely comparable across disciplines and subjects, while the overall improvement of the H-index (H1–H5) marginally explains these features but make disciplines and subjects clearly comparable, to a greater extent across subjects than disciplines. Fitting a Gamma distribution to H5 for each discipline and subject by maximum likelihood shows that the estimated probability densities and the percentages of authors characterised by H5 ≥ 1 to H5 ≥ 3 are different across disciplines but similar across subjects.
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来源期刊
Publications
Publications Social Sciences-Library and Information Sciences
CiteScore
6.50
自引率
1.90%
发文量
40
审稿时长
11 weeks
期刊介绍: The scope of Publications includes: Theory and practice of scholarly communication Digitisation and innovations in scholarly publishing technologies Metadata, infrastructure, and linking the scholarly record Publishing policies and editorial/peer-review workflows Financial models for scholarly publishing Copyright, licensing and legal issues in publishing Research integrity and publication ethics Issues and best practices in the publication of non-traditional research outputs (e.g., data, software/code, protocols, data management plans, grant proposals, etc.) Issues in the transition to open access and open science Inclusion and participation of traditionally excluded actors Language issues in publication processes and products Traditional and alternative models of peer review Traditional and alternative means of assessment and evaluation of research and its impact, including bibliometrics and scientometrics The place of research libraries, scholarly societies, funders and others in scholarly communication.
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