认知阴影:支持自然决策的策略捕获工具

D. Lafond, S. Tremblay, S. Banbury
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引用次数: 9

摘要

策略捕获是一种决策分析方法,使用多元线性回归或机器学习算法等统计模型来近似决策者的心理模型。目前的工作旨在应用一个强大的政策捕获技术,以功能上反映专家的心理模型,并创建个性化定制的认知助手。“认知阴影”方法旨在通过识别决策者偏离其通常判断模式的情况下可能出现的错误来提高决策质量。该工具实际上通过非侵入性地监视情况,并将自己的决策与人类决策者的决策进行比较,从而对决策者进行跟踪,然后在不匹配的情况下提供咨询警告。无论是在实时还是离线动态决策情况下,支持方法的设计都是为了避免认知负荷的增加而最小化。重要的是,用户信任可能是一项关键资产,因为认知阴影来自于个人的判断。在海事威胁分类任务的背景下描述了认知阴影的用例,使用经典的CART决策树归纳算法进行策略捕获。这种方法被认为适用于各种各样的领域,如监督控制、情报分析和国防和安全监视,特别适用于对错误容忍度低的高可靠性组织。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cognitive shadow: A policy capturing tool to support naturalistic decision making
Policy capturing is an approach to decision analysis using statistical models such as multiple linear regression or machine learning algorithms to approximate the mental models of decision makers. The present work seeks to apply a robust policy capturing technique to functionally mirror expert mental models and create individually-tailored cognitive assistants. The “cognitive shadow” method aims to improve decision quality by recognizing probable errors in cases where the decision maker is diverging from his usual judgmental patterns. The tool actually shadows the decision maker by un-intrusively monitoring the situation and comparing its own decisions to those of the human decision maker, and then provides advisory warnings in case of a mismatch. The support methodology is designed to be minimally intrusive to avoid an increase in cognitive load, either in real-time or off-line dynamic decision making situations. Importantly, user trust is likely to be a key asset since the cognitive shadow is derived from one's own judgments. A use case of the cognitive shadow is described within the context of a maritime threat classification task, using the classic CART decision tree induction algorithm for policy capturing. This approach is deemed applicable to a large variety of domains such as supervisory control, intelligence analysis and surveillance in defence and security, and of particular relevance in high-reliability organizations with low tolerance for error.
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