Learning conditional preference networks with queries

IJCAI(2009)

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摘要
We investigate the problem of eliciting CP-nets in the well-known model of exact learning with equivalence and membership queries. The goal is to identify a preference ordering with a binary-valued CP-net by guiding the user through a sequence of queries. Each example is a dominance test on some pair of outcomes. In this setting, we show that acyclic CP-nets are not learnable with equivalence queries alone, while they are learnable with the help of membership queries if the supplied examples are restricted to swaps. A similar property holds for tree CP-nets with arbitrary examples. In fact, membership queries allow us to provide attribute-efficient algorithms for which the query complexity is only logarithmic in the number of attributes. Such results highlight the utility of this model for eliciting CP-nets in large multi-attribute domains.
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关键词
conditional preference network,eliciting cp-nets,exact learning,dominance test,binary-valued cp-net,tree cp-nets,well-known model,arbitrary example,acyclic cp-nets,membership query,attribute-efficient algorithm
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