Computational Limits on Team Identification of Languages

نویسندگان

  • Sanjay Jain
  • Arun Sharma
چکیده

A team of learning machines is a multiset of learning machines. A team is said to successfully identify a concept just in case each member of some nonempty subset, of predetermined size, of the team identifies the concept. Team identification of programs for computable functions from their graphs has been investigated by Smith. Pitt showed that this notion is essentially equivalent to function identification by a single probabilistic machine. The present paper introduces, motivates, and studies the more difficult subject of team identification of grammars for languages from positive data. It is shown that an analog of Pitt’s result about equivalence of team function identification and probabilistic function identification does not hold for language identification, and the results in the present paper reveal a very complex structure for team language identification. It is also shown that for certain cases probabilistic language identification is strictly more powerful than team language identification. Proofs of many results in the present paper involve very sophisticated diagonalization arguments. Two very general tools are presented that yield proofs of new results from simple arithmetic manipulation of the parameters of known ones.

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Computational Limits on Team Identi cation of Languages

A team of learning machines is essentially a multiset of learning machines A team is said to successfully identify a concept just in case each member of some nonempty subset of the team identi es the concept Team identi cation of programs for computable functions from their graphs has been investigated by Smith Pitt showed that this notion is essentially equivalent to function identi cation by ...

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عنوان ژورنال:
  • Inf. Comput.

دوره 130  شماره 

صفحات  -

تاریخ انتشار 1996