The IJCAI-09 Workshop on Learning Structural Knowledge From Observations (STRUCK-09)

نویسندگان

  • Ugur Kuter
  • Hector Muñoz-Avila
چکیده

plexity levels: higher-level knowledge is formed by first acquiring simple concepts, which are then combined to learn complex ones. As a result, many cognitive architectures use structural models to represent relations between knowledge of different complexity. Structural modeling has led to a number of representation and reasoning formalisms including frames, schemas, abstractions, hierarchical task networks (HTNs), and goal graphs among others. These formalisms have in common the use of certain kinds of constructs (for example, objects, goals, skills, and tasks) that represent knowledge of varying degrees of complexity and that are connected through structural relations. In recent years, we have observed increasing interest toward the problem of learning such structural knowledge from observations. These observations range from traces generated by an automated planner to video feeds from a robot performing some actions. The goal of the workshop was to bring researchers together from machine learning, automated planning, case-based reasoning, cognitive science, and other communities that are looking into instances of this problem and to share ideas and perspectives in a common forum. A total of 27 researchers from Reports

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عنوان ژورنال:
  • AI Magazine

دوره 31  شماره 

صفحات  -

تاریخ انتشار 2010