会计中的统计与经济意义:现实检验

Pub Date : 2023-08-22 DOI:10.1515/ael-2023-0002
J. Bertomeu
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引用次数: 0

摘要

正如“房间里的大象”(Ohlson, 2022a)优雅地指出的那样,实证研究已经成熟,可以进行现实检查了。实证会计研讨会:房间里的大象。会计、经济和法律(Convivium)指的是借助统计工程来掩盖误报的做法。然而,这一诊断指出了一个更深层次的问题。占主导地位的实证范式将极其模糊的假设与高得离谱的统计置信度结合在一起,这些置信度仅靠计量经济学的hack就能打败。相反,我认为,经济规模衡量的是有意义的理论结构,对于足够重要的测量,所需的显著性水平远低于传统的显著性水平。精确地估计一个效应接近于零可能比一个有噪声但显著的系数更有意义。我提出了几个可行的建议:(1)报告标准误差,而不是传统的统计显著性(星型)或t统计,(2)讨论可能改变先验的目标显著性水平,对于未解决的问题可能比弱显著性高得多,(3)报告精确估计的零和权力分析,以及(4)将实证设计锚定在有精确参考或结构模型证明的形式理论上。
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Statistical versus Economic Significance in Accounting: A Reality Check
Abstract Empirical research is ripe for a reality check, as elegantly put by the “elephants in the room” (Ohlson, 2022a. Empirical accounting seminars: Elephants in the room. Accounting, Economics, and Law: Convivium.) referring to practices to disguise false positives with the aid of statistical engineering. However, the diagnosis points to a deeper problem. The dominant empirical paradigm combines extraordinarily vague hypotheses with ridiculously high desired levels of statistical confidence beatable solely with econometric hacks. Instead, I argue that economic magnitudes measure meaningful theoretical constructs and require far less than conventional significance levels for measurements of sufficient importance. Precisely estimating that an effect is close to zero can be more meaningful than a noisy but significant coefficient. I make several actionable proposals: (1) report standard errors rather than conventional statistical significance (stars) or t-stats, (2) discuss target significance levels likely to change priors and could much higher than weak significance for unsettled questions, (3) report precisely estimated zeros and power analyses, and (4) anchor empirical design on formal theory justified with precise references or structural models.
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