模拟宣言:蛮力经验主义在地缘政治预测中的局限性

Ian S. Lustick, Philip E. Tetlock
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引用次数: 15

摘要

情报分析传统上依赖于内部视角,具体案例的思维模式:为什么这个行动者——比如苏联——会这么做,下一步可能会做什么?然而,在9/11之后,分析人士面临的威胁范围大大扩大,这就需要从外部视角和统计模式进行推理:在不同类型的情况下,不同类型的行动者产生威胁的可能性有多大?区域研究专家(他们是大多数地缘政治部门的员工)没有能力回答这些问题。由于远程传感、数字化和计算技术的进步,情报界数据泛滥,但缺乏如何使其具有相关性的明确想法。经验主义,无论是建立在对特定地方的深入的内部视角的知识基础上,还是建立在对全球统计模式的广泛的外部视角的知识基础上,都不能也不能解决预测高影响、罕见事件的问题,比如偷袭和流行病。针对这些威胁的应急计划需要对政策干预的影响进行精确的有条件预测,而这反过来又需要综合内部和外部分析。这种综合最好是通过改进计算机模拟来实现的,这种模拟允许基于初始条件、机会和因果关系的社会科学模型之间的相互作用来重播历史。提出了加快理论导向仿真技术发展和应用的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The simulation manifesto: The limits of brute-force empiricism in geopolitical forecasting

Intelligence analysis has traditionally relied on inside-view, case-specific modes of thinking: why did this actor—say, the USSR—do that and what might it do next? After 9/11, however, analysts faced a vastly wider range of threats that necessitated outside-view, statistical modes of reasoning: how likely are threats to emerge from actors of diverse types operating in situations of diverse types? Area-study specialists (who staffed most geopolitical desks) were ill-equipped for answering these questions. Thanks to advances in long-range sensing, digitization, and computing, the intelligence community was flooded with data, but lacked clear ideas about how to render it relevant. Empiricism, whether grounded in deep inside-view knowledge of particular places or broad outside-view knowledge of statistical patterns across the globe, could not and cannot solve the problem of anticipating high-impact, rare events, like sneak attacks and pandemics. Contingency planning for these threats requires well-calibrated conditional forecasts of the impact of policy interventions that in turn require synthesizing inside- and outside-view analytics. Such syntheses will be best achieved by refining computer simulations that permit replays of history based on the interplay among initial conditions, chance, and social-science models of causation. We offer suggestions for accelerating the development and application of theory-guided simulation techniques.

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