Abstract

Science is a growing system, exhibiting ~4% annual growth in publications and ~1.8% annual growth in the number of references per publication. Combined these trends correspond to a 12-year doubling period in the total supply of references, thereby challenging traditional methods of evaluating scientific production, from researchers to institutions. Against this background, we analyzed a citation network comprised of 837 million references produced by 32.6 million publications over the period 1965-2012, allowing for a temporal analysis of the `attention economy' in science. Unlike previous studies, we analyzed the entire probability distribution of reference ages - the time difference between a citing and cited paper - thereby capturing previously overlooked trends. Over this half-century period we observe a narrowing range of attention - both classic and recent literature are being cited increasingly less, pointing to the important role of socio-technical processes. To better understand the impact of exponential growth on the underlying knowledge network we develop a network-based model, featuring the redirection of scientific attention via publications' reference lists, and validate the model against several empirical benchmarks. We then use the model to test the causal impact of real paradigm shifts, thereby providing guidance for science policy analysis. In particular, we show how perturbations to the growth rate of scientific output affects the reference age distribution and the functionality of the vast science citation network as an aid for the search & retrieval of knowledge. In order to account for the inflation of science, our study points to the need for a systemic overhaul of the counting methods used to evaluate citation impact - especially in the case of evaluating science careers, which can span several decades and thus several doubling periods.

Highlights

  • Driven by public and private sector investment into people and projects (Stephan, 2012; Stokes, 1997), the rate of scientific production has exhibited persistent growth over the last century (Althouse, West, Bergstrom, & Bergstrom, 2009; Lariviere, Archambault, & Gingras, 2008)

  • In order to gain such mechanistic insights into the impact of growth on citation inequality, uncitedness, and shifts in P( r|t), we developed a generative model of the science citation network, which we implement using Monte Carlo simulation

  • The science citation network is a rich source of opportunities to model the structure and dynamics of knowledge creation

Read more

Summary

Introduction

Driven by public and private sector investment into people and projects (Stephan, 2012; Stokes, 1997), the rate of scientific production has exhibited persistent growth over the last century (Althouse, West, Bergstrom, & Bergstrom, 2009; Lariviere, Archambault, & Gingras, 2008). Two recent studies report that older publications are being cited (as a percent) more and more over time (Verstak et al, 2014; Wallace, Lariviere, & Gingras, 2012), which is consistent with an increasing mean reference distance, demonstrated empirically (Lariviere et al, 2008), and further shown analytically to follow directly from the growth of science (Egghe, 2010). These discrepancies demonstrate the need for a methodological framework that accounts for the systematic bias introduced by the exponential increase of scientific output

Objectives
Methods
Results
Conclusion
Full Text
Paper version not known

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