The Knowledge Base Assumption
Symbolic data can be organized into a knowledge base—written in a representation language and allowing computers to infer conclusions from available information. E.g. Chair: is made of Wood, is used for Sitting On. Wood: comes from Tree.

A knowledge base could be created that would reprsent the entirety of human understanding. However, when AI researchers develop knowledge bases, they generally focus on some particular domain, such as the domain of furniture, animals, restaurants and so forth.

Examples of representation languages include predicate calculus and the computer programming language LISP.

A knowledge base representing the domain of furniture should, for example, support the inference that a chair is something people sit on.
Immediately related elementsHow this works
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Artificial Intelligence »Artificial Intelligence
Can computers think? [1] »Can computers think? [1]
Yes: physical symbol systems can think [3] »Yes: physical symbol systems can think [3]
The Knowledge Base Assumption
Combinatorial explosion of knowledge »Combinatorial explosion of knowledge
Domain aggregation doesn't give commonsense »Domain aggregation doesn't give commonsense
Creative discoveries restructure knowledge »Creative discoveries restructure knowledge
Predicate calculus can't capture human reasoning »Predicate calculus can't capture human reasoning
The frame problem »The frame problem
The problem of commonsense knowledge »The problem of commonsense knowledge
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