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Infants consider both the sample and the sampling process in inductive generalization

机译:婴儿在归纳概括中同时考虑样本和抽样过程

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摘要

The ability to make inductive inferences from sparse data is a critical aspect of human learning. However, the properties observed in a sample of evidence depend not only on the true extension of those properties but also on the process by which evidence is sampled. Because neither the property extension nor the sampling process is directly observable, the learner's ability to make accurate generalizations depends on what is known or can be inferred about both variables. In particular, different inferences are licensed if samples are drawn randomly from the whole population (weak sampling) than if they are drawn only from the property's extension (strong sampling). Given a few positive examples of a concept, only strong sampling supports flexible inferences about how far to generalize as a function of the size and composition of the sample. Here we present a Bayesian model of the joint dependence between observed evidence, the sampling process, and the property extension and test the model behaviorally with human infants (mean age: 15 months). Across five experiments, we show that in the absence of behavioral cues to the sampling process, infants make inferences consistent with the use of strong sampling; given explicit cues to weak or strong sampling, they constrain their inferences accordingly. Finally, consistent with quantitative predictions of the model, we provide suggestive evidence that infants' inferences are graded with respect to the strength of the evidence they observe.
机译:从稀疏数据进行归纳推理的能力是人类学习的关键方面。但是,在证据样本中观察到的属性不仅取决于这些属性的真实扩展,还取决于对证据进行抽样的过程。由于属性扩展和采样过程都不是直接可观察到的,因此学习者进行准确概括的能力取决于两个变量的已知信息或可推断出的信息。特别是,如果从整个总体中随机抽取样本(弱采样),则与仅从属性扩展中抽取样本(强采样)相比,可以得出不同的推论。给定一个概念的一些积极实例,只有强采样支持灵活的推断,即根据样本的大小和组成将泛化程度进行多大化。在这里,我们提出了观察到的证据,采样过程和属性扩展之间的联合依赖关系的贝叶斯模型,并对人类婴儿(平均年龄:15个月)进行了行为测试。在五个实验中,我们表明,在没有行为提示影响采样过程的情况下,婴儿做出的推断与使用强采样的行为是一致的。给定明显的线索指示弱采样或强采样,它们会相应地限制其推断。最后,与模型的定量预测一致,我们提供了暗示性的证据,即婴儿的推理相对于他们观察到的证据的强度而有所分级。

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