Publication metrics and success on the academic job market

The number of applicants vastly outnumbers the available academic faculty positions. What makes a successful academic job market candidate is the subject of much current discussion [1-4]. Yet, so far there has been no quantitative analysis of who becomes a principal investigator (PI). We here use a machine-learning approach to predict who becomes a PI, based on data from over 25,000 scientists in PubMed. We show that success in academia is predictable. It depends on the number of publications, the impact factor (IF) of the journals in which those papers are published, and the number of papers that receive more citations than average for the journal in which they were published (citations/IF). However, both the scientist's gender and the rank of their university are also of importance, suggesting that non-publication features play a statistically significant role in the academic hiring process. Our model (www.pipredictor.com) allows anyone to calculate their likelihood of becoming a PI.

[1]  J. E. Hirsch,et al.  An index to quantify an individual's scientific research output , 2005, Proc. Natl. Acad. Sci. USA.

[2]  Konrad Paul Kording,et al.  Future impact: Predicting scientific success , 2012, Nature.

[3]  B. Alberts Impact Factor Distortions , 2013, Science.

[4]  Liaojun Pang,et al.  Determining scientific impact using a collaboration index , 2013, Proceedings of the National Academy of Sciences.

[5]  M. Kirschner A Perverted View of “Impact” , 2013, Science.