Reconstructing constructivism: Causal models, Bayesian learning mechanisms, and the theory theory.
Alison Gopnik,Henry M. Wellman +1 more
TL;DR: A new version of the "theory theory" grounded in the computational framework of probabilistic causal models and Bayesian learning is proposed, which explains the learning of both more specific causal hypotheses and more abstract framework theories.
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Abstract: We propose a new version of the “theory theory” grounded in the computational framework of probabilistic causal models and Bayesian learning. Probabilistic models allow a constructivist but rigorous and detailed approach to cognitive development. They also explain the learning of both more specific causal hypotheses and more abstract framework theories. We outline the new theoretical ideas, explain the computational framework in an intuitive and non-technical way, and review an extensive but relatively recent body of empirical results that supports these ideas. These include new studies of the mechanisms of learning. Children infer causal structure from statistical information, through their own actions on the world and through observations of the actions of others. Studies demonstrate these learning mechanisms in children from 16 months to 4 years old and include research on causal statistical learning, informal experimentation through play, and imitation and informal pedagogy. They also include studies of the variability and progressive character of intuitive theory change, particularly theory of mind. These studies investigate both the physical and psychological and social domains. We conclude with suggestions for further collaborative projects between developmental and computational cognitive scientists.
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Citations
Handbook of Research on Learning and Instruction
Richard E. Mayer,Patricia A. Alexander +1 more
- 15 Feb 2011
TL;DR: A. Anderman and Heather Dawson as mentioned in this paper presented a survey of the state of the art in the field of instruction in children's education, focusing on the following: Learning to Read, Emily Fox and Patricia A. Alexander and Richard E. Mayer 2.
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•Proceedings Article
What is Causal Inference
Judea Pearl
- 01 Jan 2019
Abstract: This paper reviews a theory of causal inference based on the Structural Causal Model (SCM) described in (Pearl, 2000a). The theory unifies the graphical, potential-outcome (Neyman-Rubin), decision analytical, and structural equation approaches to causation, and provides both a mathematical foundation and a friendly calculus for the analysis of causes and counterfactuals. In particular, the paper establishes a methodology for inferring (from a combination of data and assumptions) the answers to three types of causal queries: (1) queries about the effect of potential interventions, (2) queries about counterfactuals, and (3) queries about the direct (or indirect) effect of one event on another.
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The cultural evolution of mind reading
Cecilia Heyes,Chris D. Frith +1 more
TL;DR: The view suggests that, like print reading, mindReading is a culturally inherited skill that facilitates the cultural inheritance of other, more specific skills; mind reading is a cultural gift that keeps on giving.
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Probabilistic Reasoning in Intelligent Systems: Networks of Plausible Inference
Judea Pearl
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TL;DR: Probabilistic Reasoning in Intelligent Systems as mentioned in this paper is a complete and accessible account of the theoretical foundations and computational methods that underlie plausible reasoning under uncertainty, and provides a coherent explication of probability as a language for reasoning with partial belief.
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