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Learning Causal Structure in Social, Statistical and Imagined Contexts.

机译:在社会,统计和想象的环境中学习因果结构。

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摘要

A major challenge children face is uncovering the causal structure of the world around them. Previous research on children's causal inference has demonstrated their ability to learn about causal relationships in the physical environment using probabilistic evidence. However, children must also learn about causal relationships in the social environment, including discovering the causes of other people's behavior, and understanding the causal relationships between others' goal-directed actions and the outcomes of those actions. In addition, many of the causal relationships children experience do not occur in the physical world at all, but instead occur in richly causal imaginary worlds.;In this dissertation, we argue that social reasoning and causal reasoning are deeply linked, both in the real world and in children's minds. Children use both types of information together and in fact reason about both physical and social causation in fundamentally similar ways. We suggest that children jointly construct and update causal theories about their social and physical environment and that this process is best captured by probabilistic models of cognition. We also argue that causal pretense may serve as a form of counterfactual causal reasoning, allowing children to explore causal "what if" scenarios in alternative imaginary worlds, and suggest a theoretical link between the development of an extended period of immaturity in human evolution and the emergence of powerful and wide-ranging causal learning mechanisms.;We investigate the complex and varied ways in which children learn causal relationships through three primary lines of research, each of which extends probabilistic models beyond reasoning about purely physical causes, while also characterizing the distinctive aspects of causal pretense and social causal reasoning. In the first set of studies, we examine how causal learning can influence the understanding and segmentation of action, and how observed statistical structure in human action can affect causal inferences. We present a Bayesian analysis of how statistical and causal cues to segmentation should optimally be combined, as well as four experiments investigating human action segmentation and causal inference. We find that both adults and our model are sensitive to statistical regularities and causal structure in continuous action, and are able to combine these sources of information in order to correctly infer both causal relationships and segmentation boundaries.;The second line of work examines how the social context influences children's causal learning, focusing particularly on children's imitation of causal actions. We define a Bayesian model that predicts children will decide whether to imitate part or all of an action sequence based on both the pattern of statistical evidence and the demonstrator's pedagogical stance. We conducted an experiment in which preschool children watched an experimenter repeatedly perform sequences of varying actions followed by an outcome. Children's imitation of sequences that produced the outcome increased, in some cases resulting in production of shorter sequences of actions that the children had never seen performed in isolation. A second experiment established that children interpret the same statistical evidence differently when it comes from a knowledgeable teacher versus a naive demonstrator, suggesting that children attend to both statistical and pedagogical evidence in deciding which actions to imitate, rather than obligately imitating successful action sequences.;The final line of work explores the relationship between children's understanding of real-world causal structure and their pretend play. We report a study demonstrating a link between pretend play and counterfactual causal reasoning. Preschool children given new information about a causal system made very similar inferences both when they considered counterfactuals about the system and when they engaged in pretend play about it. Counterfactual cognition and causally coherent pretense were also significantly correlated even when age, general cognitive development and executive function were controlled for. These findings link a distinctive human form of childhood play and an equally distinctive human form of causal inference. We speculate that during human evolution computations that were initially reserved for particularly important ecological problems came to be used much more widely and extensively during the long period of protected immaturity.
机译:儿童面临的主要挑战是发现他们周围世界的因果结构。先前对儿童因果推理的研究表明,他们有能力使用概率证据来了解物理环境中的因果关系。但是,儿童还必须了解社会环境中的因果关系,包括发现他人行为的原因,并了解他人的目标导向行为与这些行为的结果之间的因果关系。此外,孩子经历的许多因果关系根本不在现实世界中发生,而是在富有因果关系的虚构世界中发生。;在本文中,我们认为社会推理和因果推理在现实中是紧密联系的。世界和儿童的思想。儿童会同时使用这两种类型的信息,事实上,他们会以根本上相似的方式了解有关身体和社会因果关系的原因。我们建议儿童共同构建和更新有关其社会和自然环境的因果理论,并且最好通过认知的概率模型来把握这一过程。我们还认为,因果假装可能是反事实因果推理的一种形式,使孩子们能够在替代假想世界中探索因果“假设情况”,并提出了人类进化未成熟期的发展与人类发展的理论联系。强大而广泛的因果学习机制的出现。;我们通过三项主要研究来研究儿童学习因果关系的复杂而多样的方式,每种研究都将概率模型扩展到了纯粹的物理原因之外,同时还描述了独特的特征。因果假装和社会因果推理方面。在第一组研究中,我们研究了因果学习如何影响行为的理解和细分,以及人类行为中观察到的统计结构如​​何影响因果推理。我们提出了一种贝叶斯分析方法,该方法分析如何将统计和因果关系的线索最佳地结合起来,并提供了四个实验来研究人类行为的划分和因果关系的推断。我们发现成年人和我们的模型都对连续动作中的统计规律和因果结构很敏感,并且能够组合这些信息源以正确地推断因果关系和细分边界。社会情境影响儿童的因果学习,尤其是关注儿童对因果行为的模仿。我们定义了一个贝叶斯模型,该模型预测儿童将根据统计证据的模式和演示者的教学立场来决定是模仿动作序列的一部分还是全部。我们进行了一项实验,其中学龄前儿童看着实验者反复执行一系列不同的动作,然后执行结果。儿童对产生结果的序列的模仿增加了,在某些情况下,导致较短的行为序列的产生,这是孩子们从未见过的孤立行为。第二个实验确定,当来自一位知识渊博的老师与一个天真的示威者时,儿童对相同的统计证据的解释有所不同,这表明儿童在决定模仿哪些动作而不是强制模仿成功的动作序列时会同时考虑统计和教学证据。最后的工作探索了儿童对现实世界因果结构的理解与他们的假装游戏之间的关系。我们报告了一项研究,证明了假装游戏与反事实因果推理之间的联系。给学龄前儿童提供有关因果系统的新信息时,他们在考虑有关该系统的事实时以及在假装玩弄它时都会做出非常相似的推论。即使在控制了年龄,一般认知发展和执行功能的情况下,反事实认知和因果关系的假装也显着相关。这些发现将童年戏的一种独特的人类形式与因果推理的一种同样独特的人类形式联系在一起。我们推测,在人类进化过程中,最初保留给特别重要的生态问题的计算在受保护的不成熟的长期过程中被越来越广泛地使用。

著录项

  • 作者

    Buchsbaum, Daphna.;

  • 作者单位

    University of California, Berkeley.;

  • 授予单位 University of California, Berkeley.;
  • 学科 Developmental psychology.;Cognitive psychology.;Social psychology.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 134 p.
  • 总页数 134
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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