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Good fences make for good neighbors but bad science: a review of what improves Bayesian reasoning and why

机译:好的篱笆造就了好邻居但造就了不好的科学:回顾改进贝叶斯推理的原因及其原因

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摘要

Bayesian reasoning, defined here as the updating of a posterior probability following new information, has historically been problematic for humans. Classic psychology experiments have tested human Bayesian reasoning through the use of word problems and have evaluated each participant’s performance against the normatively correct answer provided by Bayes’ theorem. The standard finding is of generally poor performance. Over the past two decades, though, progress has been made on how to improve Bayesian reasoning. Most notably, research has demonstrated that the use of frequencies in a natural sampling framework—as opposed to single-event probabilities—can improve participants’ Bayesian estimates. Furthermore, pictorial aids and certain individual difference factors also can play significant roles in Bayesian reasoning success. The mechanics of how to build tasks which show these improvements is not under much debate. The explanations for why naturally sampled frequencies and pictures help Bayesian reasoning remain hotly contested, however, with many researchers falling into ingrained “camps” organized around two dominant theoretical perspectives. The present paper evaluates the merits of these theoretical perspectives, including the weight of empirical evidence, theoretical coherence, and predictive power. By these criteria, the ecological rationality approach is clearly better than the heuristics and biases view. Progress in the study of Bayesian reasoning will depend on continued research that honestly, vigorously, and consistently engages across these different theoretical accounts rather than staying “siloed” within one particular perspective. The process of science requires an understanding of competing points of view, with the ultimate goal being integration.
机译:贝叶斯推理,这里定义为根据新信息更新后验概率,历史上一直对人类有问题。经典心理学实验通过使用单词问题测试了人类贝叶斯推理,并根据贝叶斯定理提供的标准正确答案评估了每个参与者的表现。标准发现的性能通常很差。但是,在过去的二十年中,如何改进贝叶斯推理已取得了进展。最值得注意的是,研究表明,在自然采样框架中使用频率(与单事件概率相反)可以改善参与者的贝叶斯估计。此外,绘画辅助工具和某些个体差异因素也可以在贝叶斯推理成功中发挥重要作用。如何构建能够显示出这些改进的任务的机制尚未引起太多争议。然而,为何自然采样的频率和图片有助于贝叶斯推理的解释仍然备受争议,许多研究者陷入了围绕两种主导理论观点而根深蒂固的“阵营”。本文评估了这些理论观点的优缺点,包括经验证据的权重,理论连贯性和预测能力。按照这些标准,生态合理性方法显然比启发式和偏见更好。贝叶斯推理研究的进展将取决于诚实,有力且始终如一地参与这些不同理论解释的持续研究,而不是仅停留在一个特定的观点上。科学的过程要求对竞争观点的理解,最终目标是整合。

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