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Bayesian probability estimates are not necessary to make choices satisfying Bayesa?? rule in elementary situations

机译:贝叶斯概率估计对于做出满足贝叶斯的选择不是必需的?基本情况下的规则

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This paper has two aims. First, we investigate how often people make choices conforming to Bayes’ rule when natural sampling is applied. Second, we show that using Bayes’ rule is not necessary to make choices satisfying Bayes’ rule. Simpler methods, even fallacious heuristics, might prescribe correct choices reasonably often under specific circumstances. We considered elementary situations with binary sets of hypotheses and data. We adopted an ecological approach and prepared two-stage computer tasks resembling natural sampling. Probabilistic relations were inferred from a set of pictures, followed by a choice which was made to maximize the chance of a preferred outcome. Use of Bayes’ rule was deduced indirectly from choices. Study 1 used a stratified sample of N = 60 participants equally distributed with regard to gender and type of education (humanities vs. pure sciences). Choices satisfying Bayes’ rule were dominant. To investigate ways of making choices more directly, we replicated Study 1, adding a task with a verbal report. In Study 2 (N = 76) choices conforming to Bayes’ rule dominated again. However, the verbal reports revealed use of a new, non-inverse rule, which always renders correct choices, but is easier than Bayes’ rule to apply. It does not require inversion of conditions [transforming P(H) and P(D|H) into P(H|D)] when computing chances. Study 3 examined the efficiency of three fallacious heuristics (pre-Bayesian, representativeness, and evidence-only) in producing choices concordant with Bayes’ rule. Computer-simulated scenarios revealed that the heuristics produced correct choices reasonably often under specific base rates and likelihood ratios. Summing up we conclude that natural sampling results in most choices conforming to Bayes’ rule. However, people tend to replace Bayes’ rule with simpler methods, and even use of fallacious heuristics may be satisfactorily efficient.
机译:本文有两个目的。首先,我们调查人们在应用自然抽样时多长时间做出符合贝叶斯规则的选择。其次,我们证明了使用贝叶斯规则来进行满足贝叶斯规则的选择不是必需的。更简单的方法,甚至是错误的启发式方法,也可能经常在特定情况下合理地规定正确的选择。我们考虑了带有二元假设和数据集的基本情况。我们采用了生态方法,并准备了类似于自然采样的两阶段计算机任务。从一组图片推断出概率关系,然后进行选择以最大程度地获得首选结果的机会。贝叶斯规则的使用是从选择中间接得出的。研究1使用了N = 60名参与者的分层样本,该样本在性别和教育类型(人文与纯科学)方面平均分配。满足贝叶斯规则的选择占主导地位。为了研究直接做出选择的方法,我们复制了研究1,并添加了带有口头报告的任务。在研究2(N = 76)中,符合贝叶斯规则的选择再次占主导地位。但是,口头报告显示,使用了一条新的非反向规则,该规则总是可以做出正确的选择,但比贝叶斯规则更容易应用。在计算机会时,它不需要条件[将P(H)和P(D | H)转换为P(H | D)]。研究3检验了三种谬误的启发式方法(贝叶斯前,代表性和仅证据)在产生符合贝叶斯规则的选择中的效率。计算机模拟的情况表明,启发式算法通常会在特定的基本利率和似然比下合理地做出正确的选择。总结一下,我们得出结论,自然抽样会导致大多数选择符合贝叶斯规则。但是,人们倾向于用更简单的方法来代替贝叶斯规则,甚至使用谬误的启发式方法也可能令人满意。

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