We examine the innovation of researchers with long-lived careers in Computer Science and Physics. Despite the epistemological differences between such disciplines, we consistently find that a researcher's most innovative publication occurs earlier than expected if innovation were distributed at random across the sequence of publications in their career, and is accompanied by a peak year in which researchers publish other work which is more innovative than average. Through a series of linear models, we show that the innovation achieved by a researcher during their peak year is higher when it is preceded by a long period of low productivity. These findings are in stark contrast with the dynamics of academic impact, which researchers are incentivised to pursue through high productivity and incremental - less innovative - work by the currently prevalent paradigms of scientific evaluation.
翻译:我们研究了计算机科学和物理领域长期职业生涯的研究人员的创新情况。尽管这些学科之间在认知学上存在差异,但我们始终发现,研究人员最有创意的出版物比预期的要早一些,如果创新在其职业生涯的系列出版物中随机地传播,而且伴随而来的是研究人员出版比一般人更具有创新性的其他作品的高峰年。 通过一系列线性模型,我们发现,当研究人员在高峰年实现的创新是生产力长期低的时期时,这种创新就更高了。 这些发现与学术影响的动态形成鲜明对比,研究人员受到目前流行的科学评估模式的激励,通过高生产率和渐进(较少创新的)工作来追求。