This blog post originally appeared on the website of the German accounting research community TRR 266 Accounting for Transparency funded by the German Science Foundation (Deutsche Forschungsgemeinschaft – DFG).
Lots of new accounting research findings are published every year in countless academic journals, on pre-print servers, and as working papers on SSRN. Many of these studies are potentially policy-relevant, i.e., speaking to issues on accounting standard setters’ agendas. However, even field experts find it difficult to just stay on top of what’s new. And there is another challenge: Not all available research findings are equally pertinent to a given question, as studies face different threats to validity. In a recent presentation delivered to the European Financial Reporting Advisory Group’s Technical Expert Group (EFRAG TEG), Thorsten Sellhorn reflects on these validity challenges for empirical goodwill accounting research. Using analogies from the current corona crisis, he discusses how researchers and standard setters can address these challenges as they work towards more evidence-informed standard setting.
In the EFRAG TEG-CFSS webcast meeting on 25 March 2020, I summarized the conclusions that can be drawn from published empirical studies on goodwill accounting for evidence-informed standard-setting on this issue. My objective was to assess the evidence presented in these studies from two perspectives: First, can the studies inform current policymaking, e.g., at the IASB? And second, how valid are the empirical findings? In this post, I will focus on the validity challenges discussed in my talk, and how, despite these challenges, we, as a field, can work towards evidence-informed standard setting. I draw on the role of research in the current corona crisis for a few illustrative examples.
Evidence-informed vs. evidence-based standard setting
The term evidence-based was first coined in the 1990s in the context of medical research, and defined in Eddy (1990) as “explicitly describing the available evidence that pertains to a policy and tying the policy to evidence.” As much as we would like financial reporting and disclosure regulation to be evidence-based, there are some differences between the fields of accounting (as part of social science) and medicine that we cannot ignore. Outside of lab experiments, we struggle to deliver the same kind of ‘hard’ causal evidence as medical researchers strive to provide as a basis for policymaking.
For example, rarely do we get to randomly assign people or firms to treatment and control groups, let alone give the control groups a placebo. Convincing causal treatment effects are therefore difficult to obtain. Likewise, managers’ incentives are not randomly assigned, and thus their effect on accounting decisions may be influenced by other factors – again making causal inferences very challenging. Furthermore, meta analyses and systematic reviews are rare in accounting research, due to a lack of replication and reproduction studies.