Forecasting the Accuracy of Forecasters from Properties of Forecasting Rationales

Christopher W. Karvetski, C. Meinel, D. Maxwell, Yunzi Lu, B. Mellers, P. Tetlock
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引用次数: 7

Abstract

Geopolitical forecasting tournaments have stimulated the development of methods for improving probability judgments of real-world events. But these innovations have focused on easier-to quantify variables, like personnel selection, training, teaming, and crowd aggregation—and bypassed messier constructs, like qualitative properties of forecasters’ rationales. Here we adapt methods from natural language processing (NLP) and computational text analysis to identify distinctive reasoning strategies in the rationales of top forecasters, including: (a) cognitive styles, such as dialectical complexity, that gauge tolerance of clashing perspectives and efforts to blend them into coherent conclusions; (b) the use of comparison classes or base rates to inform forecasts; (c) metrics derived from the Linguistic Inquiry and Word Count (LIWC) program. Applying these tools to multiple forecasting tournaments and to forecasters of widely varying skill (from Mechanical Turkers to carefully culled “superforecasters”) revealed that: (a) top forecasters show higher dialectical complexity in their rationales, use more comparison classes, and offer more past-focused rationales; (b) experimental interventions, like training and teaming, that boost accuracy also influence NLP profiles of rationales, nudging them in a “superforecaster-like” direction.
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从预测基本原理的性质预测预测者的准确性
地缘政治预测竞赛刺激了改进现实世界事件概率判断方法的发展。但这些创新集中在更容易量化的变量上,比如人员选择、培训、团队合作和人群聚集,而绕过了更复杂的结构,比如预测者基本原理的定性属性。在这里,我们采用自然语言处理(NLP)和计算文本分析的方法来识别顶级预测者基本原理中的独特推理策略,包括:(a)认知风格,如辩证复杂性,衡量冲突观点的容忍度,并努力将它们融合成连贯的结论;(b)使用比较类别或基准比率作预测;(c)从语言调查和字数统计(LIWC)计划中得出的指标。将这些工具应用于多个预测锦标赛和技能差异很大的预测者(从机械土耳其人到精心挑选的“超级预测者”),发现:(a)顶级预测者在其基本原理中表现出更高的辩证复杂性,使用更多的比较类别,并提供更多关注过去的基本原理;(b)实验干预,如训练和团队合作,可以提高准确性,也会影响NLP对基本原理的描述,将它们推向“超级预测者”的方向。
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