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Relational Restricted Boltzmann Machines: A Probabilistic Logic Learning Approach

机译:关系受限制的Boltzmann机器:概率逻辑学习方法

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We consider the problem of learning Boltzmann machine classifiers from relational data. Our goal is to extend the deep belief framework of RBMs to statistical relational models. This allows one to exploit the feature hierarchies and the non-linearity inherent in RBMs over the rich representations used in statistical relational learning (SRL). Specifically, we use lifted random walks to generate features for predicates that are then used to construct the observed features in the RBM in a manner similar to Markov Logic Networks. We show empirically that this method of constructing an RBM is comparable or better than the state-of-the-art probabilistic relational learning algorithms on six relational domains.
机译:我们考虑从关系数据学习Boltzmann机器分类器的问题。我们的目标是将RBMS的深度信仰框架扩展到统计关系模型。这允许一个人利用统计关系学习(SRL)中使用的丰富表示来利用RBMS中固有的特征层次结构和非线性。具体地,我们使用升力的随机步行来生成用于谓词的特征,然后以类似于马尔可夫逻辑网络的方式构造RBM中的观察到的特征。我们凭经验地显示了这种构建RBM的方法比六个关系域上的最先进的概率关系学习算法相当或更好。

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