Theory Revision with Queries: DNF Formulas

作者:Judy Goldsmith, Robert H. Sloan, György Turán

摘要

The theory revision, or concept revision, problem is to correct a given, roughly correct concept. This problem is considered here in the model of learning with equivalence and membership queries. A revision algorithm is considered efficient if the number of queries it makes is polynomial in the revision distance between the initial theory and the target theory, and polylogarithmic in the number of variables and the size of the initial theory. The revision distance is the minimal number of syntactic revision operations, such as the deletion or addition of literals, needed to obtain the target theory from the initial theory. Efficient revision algorithms are given for three classes of disjunctive normal form expressions: monotone k-DNF, monotone m-term DNF and unate two-term DNF. A negative result shows that some monotone DNF formulas are hard to revise.

论文关键词:theory revision, query learning, computational learning theory, knowledge revision, disjunctive normal form, Boolean function learning

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论文官网地址:https://doi.org/10.1023/A:1013641821190