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Inference to the Best Explanation in Uncertain Evidential Situations

机译:对不确定的证据情况中最佳解释的推论

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摘要

It has recently been argued that a non-Bayesian probabilistic version of inference to the best explanation (IBE*) has a number of advantages over Bayesian conditionalization (Douven [2013]; Douven and Wenmackers [2017]). We investigate how IBE* could be generalized to uncertain evidential situations and formulate a novel updating rule IBE**. We then inspect how it performs in comparison to its Bayesian counterpart, Jeffrey conditionalization (JC), in a number of simulations where two agents, each updating by IBE** and JC, respectively, try to detect the bias of a coin while they are only partially certain what side the coin landed on. We show that IBE** more often prescribes high probability to the actual bias than JC. We also show that this happens considerably faster, that IBE** passes higher thresholds for high probability, and that it in general leads to more accurate probability distributions than JC.
机译:最近被认为是对最佳解释(IBE *)的非贝叶斯概率版本的推理(IBE *)的推理具有许多优势,而不是贝叶斯的条件化(Douven [2013]; Douven和Wenmackers [2017])。 我们调查IBE *如何概括为不确定的证据情况,并制定一个新颖的更新规则IBE **。 然后我们检查它如何与其贝叶斯对应,杰弗里的条件化(JC)进行比较,其中许多模拟分别是IBE **和JC的每次更新,尝试在它们是时检测硬币的偏差 只有部分肯定硬币落在的一面。 我们表明IBE **更常见于实际偏置的高概率而不是JC。 我们还表明,这更快地发生了很大程度上,即IBE **通过更高的概率阈值,并且通常导致比JC更准确的概率分布。

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