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Restructuring structured analytic techniques in intelligence

机译:重构情报中的结构化分析技术

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Structured analytic techniques (SATs) are intended to improve intelligence analysis by checking the two canonical sources of error: systematic biases and random noise. Although both goals are achievable, no one knows how close the current generation of SATs comes to achieving either of them. We identify two root problems: (1) SATs treat bipolar biases as unipolar. As a result, we lack metrics for gauging possible over-shooting—and have no way of knowing when SATs that focus on suppressing one bias (e.g., over-confidence) are triggering the opposing bias (e.g., under-confidence); (2) SATs tacitly assume that problem decomposition (e.g., breaking reasoning into rows and columns of matrices corresponding to hypotheses and evidence) is a sound means of reducing noise in assessments. But no one has ever actually tested whether decomposition is adding or subtracting noise from the analytic process—and there are good reasons for suspecting that decomposition will, on balance, degrade the reliability of analytic judgment. The central shortcoming is that SATs have not been subject to sustained scientific of the sort that could reveal when they are helping or harming the cause of delivering accurate assessments of the world to the policy community.
机译:结构化分析技术(SAT)旨在通过检查两个典型的误差源(系统偏差和随机噪声)来改进情报分析。尽管这两个目标都是可以实现的,但没有人知道当前的SAT与实现其中任何一个目标有多接近。我们确定了两个根本问题:(1)SAT将双极性偏差视为单极性。结果,我们缺乏衡量可能的超调的指标,也无法知道那些专注于抑制一种偏见(例如,过分自信)的SAT何时会触发相反的偏见(例如,过分自信); (2)SAT默许地认为问题分解(例如,将推理分解为与假设和证据相对应的矩阵的行和列)是减少评估中噪声的可靠方法。但是,没有人实际测试过分解是在分析过程中增加还是减去了噪声,并且有充分的理由怀疑分解会总体上降低分析判断的可靠性。中心缺点是,SAT并没有受到持续不断的科学检验,这些科学可以揭示它们在帮助或损害向政策界提供准确的世界评估的原因时。

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