问责
谦卑
会计
社会学
实证会计
对话的
自反性
公共关系
财务会计
政治学
会计信息系统
经济
社会科学
法学
教育学
作者
Judy Brown,Jesse Dillard
出处
期刊:Meditari accountancy research
日期:2020-10-14
卷期号:29 (2): 197-218
被引量:9
标识
DOI:10.1108/medar-01-2020-0692
摘要
Purpose The purpose of this paper is to present an expanded introduction of Jasanoff’s (2003, 2007) work on “technologies of humility” to the accounting literature and to show how it can be useful in developing critical dialogic accountings for non-financial matters. Design/methodology/approach Drawing on Jasanoff’s (2003, 2007) distinction between “technologies of hubris” and “technologies of humility”, this study extends prior research on critical dialogic accounting and accountability (CDAA) that seeks to “take pluralism seriously” (Brown, 2009; Dillard and Vinnari, 2019). This study shows how Jasanoff’s work facilitates constructing critical, reflexive approaches to accounting for non-financial matters consistent with agonistics-based CDAA. Findings Jasanoff’s four proposed focal points for developing new analytical tools for accounting for non-financial matters and promoting participatory governance – framing, vulnerability, distribution and learning – are argued to be useful in conceptualising possible CDAA technologies. These aspects are all currently ignored or downplayed in conventional approaches to accounting for non-financial matters, limiting accounting’s ability to promote more socially just and ecologically sustainable societies. Originality/value The authors introduce Jasanoff’s work on technologies of humility to show how CDAA, informed by Jasanoff’s proposed focal points, can help to expose controversial issues that powerful interests prefer to obscure, to surface the normative foundations of technocratic analytic methods, to address the need for plural perspectives and social learning and to bring all these aspects “into the dynamics of democratic debate” (Jasanoff, 2003, p. 240). As such, they provide criteria for constructing accounting technology consistent with agonistics-based CDAA.
科研通智能强力驱动
Strongly Powered by AbleSci AI