Department of Psychology.
J Exp Psychol Gen. 2019 Apr;148(4):619-643. doi: 10.1037/xge0000594.
The pervasive presence of relational information in concepts, and its indirect presence in sensory input, raises the question of how it is extracted from experience. We operationalized experience as a stream of events in which reliable predictive relationships exist among random ones, and in which learners are naïve as to what they will learn (i.e., a statistical learning paradigm). First, we asked whether predictive event pairs would spontaneously be seen as causing each other, given no instructions to evaluate causality. We found that predictive information indeed informed later causal judgments but did not lead to a spontaneous sense of causality. Thus, event contingencies are relevant to causal inference, but such interpretations may not occur fully bottom-up. A second question was how such experience might be used to learn about novel objects. Because events occurred either around or involving a continually present object, we were able to distinguish objects from events. We found that objects can be attributed causal properties by virtue of a higher-order structure, in which the object's identity is linked not to the increased likelihood of its effect, but rather, to the predictive structure among events, given its presence. This is an important demonstration that objects' causal properties can be highly abstract: They need not refer to an occurrence of a sensory event per se, or its link to an object, but rather to whether or not a predictive relationship holds among events in its presence. These learning mechanisms may be important for acquiring abstract knowledge from experience. (PsycINFO Database Record (c) 2019 APA, all rights reserved).
概念中普遍存在关系信息,其在感官输入中的间接存在,引发了一个问题,即如何从经验中提取它。我们将经验操作化为一连串的事件,其中随机事件之间存在可靠的预测关系,并且学习者对他们将学到什么一无所知(即,一种统计学习范式)。首先,我们询问在没有评估因果关系的指示的情况下,预测性事件对是否会自发地被视为相互引起。我们发现,预测信息确实会影响后来的因果判断,但不会导致自发的因果感。因此,事件的偶然性与因果推理有关,但这种解释可能不会完全自下而上。第二个问题是这种经验如何用于学习新对象。由于事件要么发生在持续存在的物体周围,要么涉及到持续存在的物体,我们能够将物体与事件区分开来。我们发现,由于更高阶的结构,对象可以归因于因果属性,在该结构中,对象的身份与其效应的可能性增加无关,而是与其存在时的事件之间的预测结构有关。这是一个重要的证明,即对象的因果属性可以是高度抽象的:它们不一定指的是感官事件本身的发生,或者其与对象的联系,而是指在其存在时事件之间是否存在预测关系。这些学习机制可能对于从经验中获取抽象知识很重要。(PsycINFO 数据库记录(c)2019 APA,保留所有权利)。