引文数据中事件建模的匹配对照组:诺贝尔奖效应在引文网络中的例证

Matched control groups for modeling events in citation data: An illustration of nobel prize effects in citation networks

Journal of the Association for Information Science and Technology (JASIST) · 2017
被引 24
ABS 3

中文导读

本文指出简单比较事件前后平均引文数会带来偏差,提出使用匹配对照组改进因果推断,并以诺贝尔奖效应为例,证明不存在引文影响上的诺贝尔奖效应或链式反应。

Abstract

Bibliometric data are frequently used to study the effects of events, such as the honoring of a scholar with an award, and to investigate changes of citation impact over time. However, the number of yearly citations depends upon time for multiple reasons: a) general time trends in citation data, b) changing coverage of databases, c) individual citation life‐cycles, and d) selection on citation impact. Hence, it is often ill‐advised to simply compare the average number of citations before and after an event to estimate its causal effect. Using a recent publication in this journal on the potential citation chain reaction of a Nobel Prize, we demonstrate that a simple pre‐post comparison can lead to biased and misleading results. We propose using matched control groups to improve causal inference and illustrate that the inclusion of a tailor‐made synthetic control group in the statistical analysis helps to avoid methodological artifacts. Our results suggest that there is neither a Nobel Prize effect as regards citation impact of the Nobel laureate under investigation nor a related chain reaction in the citation network, as suggested in the original study. Finally, we explain that these methodological recommendations extend far beyond the study of Nobel Prize effects in citation data.

文献计量学因果推断引文分析科学计量学数据科学