Relational information gain
作者:Marco Lippi, Manfred Jaeger, Paolo Frasconi, Andrea Passerini
摘要
We introduce relational information gain, a refinement scoring function measuring the informativeness of newly introduced variables. The gain can be interpreted as a conditional entropy in a well-defined sense and can be efficiently approximately computed. In conjunction with simple greedy general-to-specific search algorithms such as FOIL, it yields an efficient and competitive algorithm in terms of predictive accuracy and compactness of the learned theory. In conjunction with the decision tree learner TILDE, it offers a beneficial alternative to lookahead, achieving similar performance while significantly reducing the number of evaluated literals.
论文关键词:Relational learning, Inductive logic programming, Information gain
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论文官网地址:https://doi.org/10.1007/s10994-010-5194-7