Abstract

This article is motivated by the work as editor-in-chief of the Austrian Journal of Statistics and contains detailed analyses about the impact of the Austrian Journal of Statistics.
 The impact of a journal is typically expressed by journal metrics indicators. One of the important ones, the journal impact factor is calculated from the Web of Science (WoS) database by Clarivate Analytics.
 It is known that newly established journals or journals without membership in big publishers often face difficulties to be included, e.g., in the Science Citation Index (SCI) and thus they do not receive a WoS journal impact factor, as it is the case for example, for the Austrian Journal of Statistics.
 In this study, a novel approach is pursued modeling and predicting the WoS impact factor of journals using open access or partly open-access databases, like Google Scholar, ResearchGate, and Scopus. I hypothesize a functional linear dependency between citation counts in these databases and the journal impact factor. These functional relationships enable the development of a model that may allow estimating the impact factor for new, small, and independent journals not listed in SCI. However, only good results could be achieved with robust linear regression and well-chosen models.
 In addition, this study demonstrates that the WoS impact factor of SCI listed journals can be successfully estimated without using the Web of Science database and therefore the dependency of researchers and institutions to this popular database can be minimized. These results suggest that the statistical model developed here can be well applied to predict the WoS impact factor using alternative open-access databases.

Highlights

  • The journal impact factor is one of the most well-known indicators calculated from science citation indexed (SCI) journals listed in the journal citation reports (JCR) and calculated from the Web of Science (WoS) database

  • The R2 is very high (0.957 and 0.911), the variation of the journal impact factor calculated by Clarivate Analytics using the Web of Science database is almost fully explainable with the statistical models using Google Scholar, Scopus and ResearchGate citation data

  • While many journal metrics alternative to JIF are becoming more and more important and may have some advantages regarding coverage, access and methodical aspects for the calculation of a journal metric, the WoS SCI journal impact factor is still one of the most important proxy to measure the quality of a journal

Read more

Summary

Introduction

The journal impact factor (hereinafter referred to as JIF) is one of the most well-known indicators calculated from science citation indexed (SCI) journals listed in the journal citation reports (JCR) and calculated from the WoS database. It is a proxy of the relevance of a scientific journal. The higher the JIF, the more often the journal has been cited within a certain time period (typically 2 or 5 years). About 3750 journals are included in the WoS SCI.

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call