马尔可夫逻辑网络
外观
所谓马尔可夫逻辑网(Markov logic network (MLN)),就是由一阶逻辑公式及其对应的权值组成的二元组集合。马尔可夫逻辑网络的基本思想是将一阶逻辑的限制放松,即一个事件违反公式越多,其发生概率越小,但未必为0。
參考文獻
[编辑]- Richardson, Matthew; Domingos, Pedro. Markov Logic Networks (PDF). Machine Learning. 2006, 62 (1-2): 107–136 [2016-06-06]. doi:10.1007/s10994-006-5833-1. (原始内容存档 (PDF)于2012-02-05).
外部連結
[编辑]- University of Washington Statistical Relational Learning group
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