Thesis 3: Anticipatory Story Reading

Exploration of a space in which "a topic map can learn how to read"

An original aspect of the vision was that of crafting a topic map which can learn how to read. Some entailments are:

  • Anticipation, anticipatory systems, entail models:
    • Models of self
    • Models of the environment
  • LinkGrammar parsing entails
    • Models of the language being parsed
    • Models of the syntax of that language (typically, Regex queries)
  • LinkGrammar models are fixed though extensible at compile time
  • We seek language models which are extensible at run time--learning models

<ToBeContinued>

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