MIT OpenCourseWare

9.66J / 9.660J / 6.804J Computational Cognitive Science, Fall 2004

Image showing ways of structuring knowledge representations using directed networks.

Human learning and reasoning is founded on multiple knowledge representations with different kinds of structures, such as trees, chains, dominance hierarchies, neighborhood graphs, and directed networks. This class uses probabilistic inference methods from machine learning and Bayesian statistics, operating over different kinds of structured representational systems, to explain how people's domain knowledge can support a wide range of learning and reasoning tasks, and how these knowledge structures may themselves be learned from experience. (Image by Prof. Joshua Tenenbaum.)

课程重点

This course includes a complete bibliography of readings.

课程描述

This course is an introduction to computational theories of human cognition. Drawing on formal models from classic and contemporary artificial intelligence, students will explore fundamental issues in human knowledge representation, inductive learning and reasoning. What are the forms that our knowledge of the world takes? What are the inductive principles that allow us to acquire new knowledge from the interaction of prior knowledge with observed data? What kinds of data must be available to human learners, and what kinds of innate knowledge (if any) must they have?

师资

讲师:
Prof. Joshua Tenenbaum

上课时数

教师授课:
每周2节
每节1.5小时

程度

大学部 / 研究所

回应

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原文声明