Cognitive biases undermine the accuracy and reliability of accounting tasks. Yet the literature on debiasing techniques remains fragmented, leaving challenges unresolved. Drawing on a comprehensive review of seventy-five accounting studies, this article introduces a Debiasing Wheel. The framework first identifies eighteen accounting tasks and the twenty cognitive biases that affect them, then maps sixteen debiasing techniques into five intervention types – cognitive fluency, choice architecture, conscientious engagement, cognitive reframing, and outside view – aligned with the three phases of judgment and decision-making (options identification, options evaluation, and choice). Rather than offering a universal taxonomy of biases or a one-size-fits-all solution, the Debiasing Wheel delineates the scope conditions under which specific techniques are expected to be effective, conditional on task characteristics and the judgment and decision-making phase. We identify directions for future research, including targeting under-addressed biases, examining the limits of debiasing and alternative approaches, integrating heuristics as tools for bias mitigation, and exploring AI-driven techniques to enhance judgment and decision-making processes. In short, the Debiasing Wheel defines what to fix (task-specific biases), how to fix it (techniques within intervention types), and when to act (AJDM timing), providing a unified guide for improving AJDM.
Camilli, R., Cristofaro, M., Hristov, I., Sargiacomo, M. (2026). Debiasing accounting judgment and decision-making. ACCOUNTING FORUM [10.1080/01559982.2026.2616586].
Debiasing accounting judgment and decision-making
Camilli R.;Cristofaro M;Hristov I.;
2026-04-13
Abstract
Cognitive biases undermine the accuracy and reliability of accounting tasks. Yet the literature on debiasing techniques remains fragmented, leaving challenges unresolved. Drawing on a comprehensive review of seventy-five accounting studies, this article introduces a Debiasing Wheel. The framework first identifies eighteen accounting tasks and the twenty cognitive biases that affect them, then maps sixteen debiasing techniques into five intervention types – cognitive fluency, choice architecture, conscientious engagement, cognitive reframing, and outside view – aligned with the three phases of judgment and decision-making (options identification, options evaluation, and choice). Rather than offering a universal taxonomy of biases or a one-size-fits-all solution, the Debiasing Wheel delineates the scope conditions under which specific techniques are expected to be effective, conditional on task characteristics and the judgment and decision-making phase. We identify directions for future research, including targeting under-addressed biases, examining the limits of debiasing and alternative approaches, integrating heuristics as tools for bias mitigation, and exploring AI-driven techniques to enhance judgment and decision-making processes. In short, the Debiasing Wheel defines what to fix (task-specific biases), how to fix it (techniques within intervention types), and when to act (AJDM timing), providing a unified guide for improving AJDM.| File | Dimensione | Formato | |
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