Bibliographic metrics are commonly utilized for evaluation purposes within academia, often in conjunction with other metrics. These metrics vary widely across fields and change with the seniority of the scholar; consequently, the only way to interpret these values is by comparison with other academics within the same field who are of similar seniority. Among the field- and time- normalized indicators, rank percentile has grown in popularity, and it is preferred over other types of indicators. In this paper, we propose and justify a novel rank percentile indicator for scholars. Furthermore, we emphasize on the time factor that is built into the rank percentile, and we demonstrate that the rank percentile is highly predictable. The publication percentile is highly stable over time, while the scholar percentile exhibits short-term stability and can be predicted via a simple linear regression model. More advanced models that utilize extensive lists of features offer slightly superior performance; however, the simplicity and interpretability of the simple model impose significant advantages over the additional complexity of other models.
翻译:书目量度通常在学术界用于评价目的,通常与其他指标一起使用。这些度量在各不同领域差异很大,随着学者的资历而变化;因此,解释这些值的唯一办法是与同一领域资历相似的其他学者进行比较。在现场和时间标准化指标中,百分位位数的排名越来越受欢迎,比其他类型的指标更受青睐。在本文中,我们建议并证明为学者设定一个新的百分位指标是合理的。此外,我们强调在等级百分位中所含的时间因素,我们证明排名百分位是高度可预测的。出版百分位数随着时间的推移非常稳定,而学者百分位数展示短期稳定,可以通过简单的线性回归模型预测。更先进的模型使用大量特征清单,表现略优一些;不过,简单模型的简单和可解释性为其他模型的额外复杂性提供了显著的优势。