作为贝叶斯学科的会计理论

Q1 Business, Management and Accounting
D. Johnstone
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引用次数: 13

摘要

概率、证据和决策的贝叶斯逻辑是会计披露分析模型的假定推理规则。对“信息内容”、“价值相关性”、“决策有用”以及可能的保守主义等已有数十年历史的会计概念的任何合理解释,都不可避免地是贝叶斯的。通过提出贝叶斯理论中的一些概率原理、悖论和意外,可以检验和增强会计理论中关于信息及其价值的直觉。在社会科学的所有分支中,会计信息理论需要贝叶斯的洞察力。本专著列出了贝叶斯主义的主要逻辑结构和原则,并将它们与理论会计文献中的重要贡献联系起来。所采用的方法本质上是“老式的”规范统计,建立在Demski, Ijiri, Feltham和其他早期会计理论家的阐述之上,他们将贝叶斯理论带入了会计理论。本书描述了这种联系的一些历史,以及商学院在20世纪50年代至70年代贝叶斯统计发展中的作用。后来会计的发展,特别是嘈杂的理性预期模型,在这种模型下,公司报告的信息是内生的,而不是不受影响的或“从自然中提取”的,使得贝叶斯推理的任务更加困难,但原则上没有什么不同。信息使用者仍然必须根据所报道的内容修改信念。额外的复杂性是,用户必须在他们的贝叶斯模型中考虑到公司的感知披露动机和其他相关背景知识。贝叶斯模型的一个众所周知的优点是承认并正式纳入了主观考虑。考虑到自利或有偏见的报道,以及任何其他明显的信号缺陷或“信息不确定性”,都是贝叶斯信息理论的重要组成部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accounting Theory as a Bayesian Discipline
The Bayesian logic of probability, evidence and decision is the presumed rule of reasoning in analytical models of accounting disclosure. Any rational explication of the decades-old accounting notions of "information content", "value relevance", "decision useful", and possibly conservatism, is inevitably Bayesian. By raising some of the probability principles, paradoxes and surprises in Bayesian theory, intuition in accounting theory about information, and its value, can be tested and enhanced. Of all the branches of the social sciences, accounting information theory begs Bayesian insights. This monograph lays out the main logical constructs and principles of Bayesianism, and relates them to important contributions in the theoretical accounting literature. The approach taken is essentially "old-fashioned" normative statistics, building on the expositions of Demski, Ijiri, Feltham and other early accounting theorists who brought Bayesian theory to accounting theory. Some history of this nexus, and the role of business schools in the development of Bayesian statistics in the 1950–1970s, is described. Later developments in accounting, especially noisy rational expectations models under which the information reported by firms is endogenous, rather than unaffected or "drawn from nature", make the task of Bayesian inference more difficult yet no different in principle. The information user must still revise beliefs based on what is reported. The extra complexity is that users must allow for the firm's perceived disclosure motives and other relevant background knowledge in their Bayesian models. A known strength of Bayesian modelling is that subjective considerations are admitted and formally incorporated. Allowances for perceived self-interest or biased reporting, along with any other apparent signal defects or "information uncertainty", are part and parcel of Bayesian information theory.
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来源期刊
Foundations and Trends in Accounting
Foundations and Trends in Accounting Economics, Econometrics and Finance-Finance
CiteScore
6.50
自引率
0.00%
发文量
2
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