Douven Igor
SND, CNRS, Sorbonne University, 1, rue Victor Cousin, 75005, Paris, France.
Stud Hist Philos Sci. 2020 Feb;79:1-14. doi: 10.1016/j.shpsa.2019.06.004. Epub 2019 Jul 4.
There is growing evidence that explanatory considerations influence how people change their degrees of belief in light of new information. Recent studies indicate that this influence is systematic and may result from people's following a probabilistic update rule. While formally very similar to Bayes' rule, the rule or rules people appear to follow are different from, and inconsistent with, that better-known update rule. This raises the question of the normative status of those updating procedures. Is the role explanation plays in people's updating their degrees of belief a bias? Or are people right to update on the basis of explanatory considerations, in that this offers benefits that could not be had otherwise? Various philosophers have argued that any reasoning at deviance with Bayesian principles is to be rejected, and so explanatory reasoning, insofar as it deviates from Bayes' rule, can only be fallacious. We challenge this claim by showing how the kind of explanation-based update rules to which people seem to adhere make it easier to strike the best balance between being fast learners and being accurate learners. Borrowing from the literature on ecological rationality, we argue that what counts as the best balance is intrinsically context-sensitive, and that a main advantage of explanatory update rules is that, unlike Bayes' rule, they have an adjustable parameter which can be fine-tuned per context. The main methodology to be used is agent-based optimization, which also allows us to take an evolutionary perspective on explanatory reasoning.
越来越多的证据表明,解释性因素会影响人们如何根据新信息改变自己的信念程度。最近的研究表明,这种影响是系统性的,可能源于人们遵循一种概率更新规则。虽然在形式上与贝叶斯规则非常相似,但人们似乎遵循的一个或多个规则与那个更知名的更新规则不同,且不一致。这就引发了那些更新程序的规范地位问题。解释在人们更新信念程度中所起的作用是一种偏差吗?或者人们基于解释性因素进行更新是正确的,因为这样做能带来其他方式无法获得的益处?许多哲学家认为,任何偏离贝叶斯原则的推理都应被摒弃,因此,解释性推理,就其偏离贝叶斯规则而言,只能是谬误的。我们对这一观点提出质疑,通过展示人们似乎遵循的那种基于解释的更新规则如何使人们在快速学习者和准确学习者之间更容易达到最佳平衡。借鉴关于生态理性的文献,我们认为什么算作最佳平衡本质上是依赖于上下文的,而且解释性更新规则的一个主要优势在于,与贝叶斯规则不同,它们有一个可调整的参数,可根据每个上下文进行微调。要使用的主要方法是基于主体的优化,这也使我们能够从进化的角度看待解释性推理。