Citations in science are being studied from several perspectives. On the one hand, there are approaches such as scientometrics and the science of science, which take a more quantitative perspective. In this chapter I briefly review some of the literature on citations, citation distributions and models of citations. These citations feature prominently in another part of the literature which is dealing with research evaluation and the role of metrics and indicators in that process. Here I briefly review part of the discussion in research evaluation. This also touches on the subject of how citations relate to peer review. Finally, I try to integrate the two literatures with the aim of clarifying what I believe the two can learn from each other. The fundamental problem in research evaluation is that research quality is unobservable. This has consequences for conclusions that we can draw from quantitative studies of citations and citation models. The term "indicators" is a relevant concept in this context, which I try to clarify. Causality is important for properly understanding indicators, especially when indicators are used in practice: when we act on indicators, we enter causal territory. Even when an indicator might have been valid, through its very use, the consequences of its use may invalidate it. By combining citation models with proper causal reasoning and acknowledging the fundamental problem about unobservable research quality, we may hope to make progress.
翻译:科学的引文正在从几个角度进行研究。一方面,科学的引文正在从几个角度进行研究。一方面,有科学计量学和科学科学等方法,这些方法具有更量化的视角。在本章中,我简要地回顾了关于引文、引文分布和引文模式的一些文献。这些引文在涉及研究评价以及该过程中指标和指标作用的文献的另一部分中占有突出地位。我在这里简要地回顾了研究评价部分讨论的内容。这也涉及到引文与同行审查的关系。最后,我试图将这两个文献结合起来,以澄清我认为两者可以相互学习的内容。研究评价的根本问题是研究质量是不可观察的。这对我们可以从引文和引文模型的定量研究中得出的结论产生了影响。在这方面,“指标”一词是一个相关的概念,我试图加以澄清。对于正确理解指标十分重要,特别是当指标在实践中使用时:当我们采取行动时,我们进入因果关系领域。即使一项指标可能是正确的,通过非常深刻的使用,研究质量是不可观察的,我们可能通过正确的推理,将其结果与根本的推论结果结合起来,从而确认其无效。