Inequality and cumulative advantage in science careers: a case study of high-impact journals

Analyzing a large data set of publications drawn from the most competitive journals in the natural and social sciences we show that research careers exhibit the broad distributions of individual achievement characteristic of systems in which cumulative advantage plays a key role. While most researchers are personally aware of the competition implicit in the publication process, little is known about the levels of inequality at the level of individual researchers. Here we analyzed both productivity and impact measures for a large set of researchers publishing in high-impact journals, accounting for censoring biases in the publication data by using distinct researcher cohorts defined over non-overlapping time periods. For each researcher cohort we calculated Gini inequality coefficients, with average Gini values around 0.48 for total publications and 0.73 for total citations. For perspective, these observed values are well in excess of the inequality levels observed for personal income in developing countries. Investigating possible sources of this inequality, we identify two potential mechanisms that act at the level of the individual that may play defining roles in the emergence of the broad productivity and impact distributions found in science. First, we show that the average time interval between a researcher’s successive publications in top journals decreases with each subsequent publication. Second, after controlling for the time dependent features of citation distributions, we compare the citation impact of subsequent publications within a researcher’s publication record. We find that as researchers continue to publish in top journals, there is more likely to be a decreasing trend in the relative citation impact with each subsequent publication. This pattern highlights the difficulty of repeatedly producing research findings in the highest citation-impact echelon, as well as the role played by finite career and knowledge life-cycles, and the intriguing possibility that confirmation bias plays a role in the evaluation of scientific careers.

[1]  Claudio Castellano,et al.  Rescaling citations of publications in Physics , 2010, Physical review. E, Statistical, nonlinear, and soft matter physics.

[2]  Claudio Castellano,et al.  Universality of citation distributions: Toward an objective measure of scientific impact , 2008, Proceedings of the National Academy of Sciences.

[3]  Michael Ruse,et al.  On being a scientist. Committee on the Conduct of Science, National Academy of Sciences of the United States of America. , 1989, Proceedings of the National Academy of Sciences of the United States of America.

[4]  Melissa S. Anderson,et al.  Scientists' Perceptions of Organizational Justice and Self-Reported Misbehaviors , 2006, Journal of empirical research on human research ethics : JERHRE.

[5]  Joon-Oh Park,et al.  The Increasing Dominance of Teams in Production of Knowledge , 2011 .

[6]  R. Merton The Matthew Effect in Science , 1968, Science.

[7]  Jon M. Kleinberg,et al.  Mechanisms for (mis)allocating scientific credit , 2011, STOC '11.

[8]  Maximiliaan Schillebeeckx,et al.  The missing piece to changing the university culture , 2013, Nature Biotechnology.

[9]  Santo Fortunato,et al.  On the Predictability of Future Impact in Science , 2013, Scientific Reports.

[10]  Julia Lane,et al.  Science Funding and Short-Term Economic Activity , 2014, Science.

[11]  H. Stanley,et al.  The growth of business firms: theoretical framework and empirical evidence. , 2005, Proceedings of the National Academy of Sciences of the United States of America.

[12]  Klaus Nowotny,et al.  Career Choices in Academia. WWWforEurope Working Paper No. 36 , 2013 .

[13]  Benjamin F. Jones,et al.  Multi-University Research Teams: Shifting Impact, Geography, and Stratification in Science , 2008, Science.

[14]  B. Maher,et al.  Poll results: look who's doping , 2008, Nature.

[15]  David Cyranoski,et al.  Education: The PhD factory , 2011, Nature.

[16]  Edwin Horlings,et al.  Search strategies along the academic lifecycle , 2012, Scientometrics.

[17]  Harry Eugene Stanley,et al.  Persistence and uncertainty in the academic career , 2012, Proceedings of the National Academy of Sciences.

[18]  Woo-Sung Jung,et al.  Quantitative and empirical demonstration of the Matthew effect in a study of career longevity , 2008, Proceedings of the National Academy of Sciences.

[19]  Ingo Scholtes,et al.  Predicting scientific success based on coauthorship networks , 2014, EPJ Data Science.

[20]  R. Schekman How journals like Nature, Cell and Science are damaging science , 2013 .

[21]  Richard B. Freeman,et al.  Competition and Careers in Biosciences , 2001, Science.

[22]  Paula E. Stephan,et al.  Age and the Nobel prize revisited , 1993, Scientometrics.

[23]  A. Casadevall,et al.  Misconduct accounts for the majority of retracted scientific publications , 2012, Proceedings of the National Academy of Sciences.

[24]  Jürgen Janger,et al.  Academic careers: a cross-country perspective , 2013 .

[25]  Paul A. David,et al.  The Historical Origins of 'Open Science': An Essay on Patronage, Reputation and Common Agency Contracting in the Scientific Revolution , 2008 .

[26]  Bruce Albertsa,et al.  Inequality and cumulative advantage in science careers : a case study of high-impact journals , 2015 .

[27]  Gilbert Chin,et al.  The science of inequality. What the numbers tell us. Introduction. , 2014, Science.

[28]  Jennifer Couzin-Frankel Chasing the money. , 2014, Science.

[29]  Diane Hoffman-Kim,et al.  On being a scientist , 1995 .

[30]  Klaus Nowotny,et al.  Career Choices in Academia , 2013 .

[31]  Gilbert Chin,et al.  What the numbers tell us , 2014 .

[32]  Paula E. Stephan,et al.  Research Productivity over the Life Cycle: Evidence for Academic Scientists , 1991 .

[33]  Jerker Denrell,et al.  Top performers are not the most impressive when extreme performance indicates unreliability , 2012, Proceedings of the National Academy of Sciences.

[34]  Pierre Azoulay,et al.  Superstar Extinction , 2008 .

[35]  Vincent D. Blondel,et al.  Career on the Move: Geography, Stratification, and Scientific Impact , 2014, Scientific Reports.

[36]  R S Nicholson,et al.  On being a scientist. , 1989, Science.

[37]  Jürgen Janger,et al.  Academic Careers: A Cross-country Perspective. WWWforEurope Working Paper No. 37 , 2013 .

[38]  Soong Moon Kang,et al.  Field experiments of success-breeds-success dynamics , 2014, Proceedings of the National Academy of Sciences.

[39]  Colin G Orton,et al.  Point/Counterpoint. The future h-index is an excellent way to predict scientists' future impact. , 2013, Medical physics.

[40]  Santo Fortunato,et al.  The case for caution in predicting scientists' future impact , 2013, ArXiv.

[41]  Sauro Succi,et al.  Statistical regularities in the rank-citation profile of scientists , 2011, Scientific reports.

[42]  Stasa Milojevic,et al.  Accuracy of simple, initials-based methods for author name disambiguation , 2013, J. Informetrics.

[43]  Harold Varmus,et al.  Rescuing US biomedical research from its systemic flaws , 2014, Proceedings of the National Academy of Sciences.

[44]  H. Stanley,et al.  Methods for measuring the citations and productivity of scientists across time and discipline. , 2009, Physical review. E, Statistical, nonlinear, and soft matter physics.

[45]  Santo Fortunato,et al.  Diffusion of scientific credits and the ranking of scientists , 2009, Physical review. E, Statistical, nonlinear, and soft matter physics.

[46]  Pierre Azoulay,et al.  Effect or Fable ? , 2012 .

[47]  Harry Eugene Stanley,et al.  Reputation and impact in academic careers , 2013, Proceedings of the National Academy of Sciences.

[48]  Claudio Castellano,et al.  A Reverse Engineering Approach to the Suppression of Citation Biases Reveals Universal Properties of Citation Distributions , 2012, PloS one.

[49]  Paula E. Stephan How Economics Shapes Science , 2012 .

[50]  Benjamin F. Jones,et al.  Age dynamics in scientific creativity , 2011, Proceedings of the National Academy of Sciences.

[51]  Geoffrey W. McCarthy,et al.  On Being a Scientist: A Guide to Responsible Conduct in Research, 3rd ed. , 2012 .

[52]  Melissa S. Anderson,et al.  Scientists behaving badly , 2005, Nature.

[53]  Brian C. Martinson,et al.  The academic birth rate , 2011, EMBO reports.

[54]  Pierre Azoulay,et al.  Matthew: Effect or Fable? , 2012, Manag. Sci..

[55]  Brian C. Martinson,et al.  The Perverse Effects of Competition on Scientists’ Work and Relationships , 2007, Sci. Eng. Ethics.

[56]  Paula E. Stephan,et al.  Changing Incentives to Publish , 2011, Science.

[57]  Benjamin F. Jones,et al.  Age and Scientific Genius , 2014 .

[58]  Amin Mazloumian,et al.  Predicting Scholars' Scientific Impact , 2012, PloS one.

[59]  Sauro Succi,et al.  The Z-index: A geometric representation of productivity and impact which accounts for information in the entire rank-citation profile , 2013, J. Informetrics.

[60]  Yu Xie,et al.  “Undemocracy”: inequalities in science , 2014, Science.

[61]  Stephen Cole,et al.  Social Stratification in Science , 1974 .

[62]  Beryl Lieff Benderly The Arc of the Academic Research Career: Issues and Implications for U.S. Science and Engineering Leadership: Summary of a Workshop , 2014 .

[63]  Benjamin F. Jones,et al.  Atypical Combinations and Scientific Impact , 2013, Science.

[64]  Filippo Radicchi,et al.  The Possible Role of Resource Requirements and Academic Career-Choice Risk on Gender Differences in Publication Rate and Impact , 2012, PloS one.

[65]  Ioannis T. Pavlidis,et al.  A Quantitative Perspective on Ethics in Large Team Science , 2014, Sci. Eng. Ethics.

[66]  Dirk Helbing,et al.  Exploiting citation networks for large-scale author name disambiguation , 2014, EPJ Data Science.

[67]  Orion Penner,et al.  Methods for detrending success metrics to account for inflationary and deflationary factors* , 2011 .