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Relational Random Forests Based on Random Relational Rules

机译:基于随机关系规则的关系随机森林

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Random Forests have been shown to perform very well in propositional learning. Fore is an upgrade of Random Forests for relational data. In this paper we investigate shortcomings of FORF and propose an alternative algorithm, R~4F, for generating Random Forests over relational data. R~4F employs randomly generated relational rules as fully self-contained Boolean tests inside each node in a tree and thus can be viewed as an instance of dynamic propositionalization. The implementation of R~4F allows for the simultaneous or parallel growth of all the branches of all the trees in the ensemble in an efficient shared, but still single-threaded way. Experiments favorably compare R~4F to both Forf and the combination of static propositionalization together with standard Random Forests. Various strategies for tree initialization and splitting of nodes, as well as resulting ensemble size, diversity, and computational complexity of R~4F are also investigated.
机译:随机森林已被证明在命题学习中表现出色。 Fore是对关系数据的随机森林的升级。在本文中,我们研究了FORF的缺点,并提出了一种用于在关系数据上生成随机森林的替代算法R〜4F。 R〜4F使用随机生成的关系规则作为树中每个节点内的完全自包含的布尔测试,因此可以视为动态命题化的实例。 R〜4F的实现允许以有效的共享但仍然是单线程的方式同时或并行增长集合中所有树的所有分支。实验很好地将R〜4F与Forf以及静态命题化与标准随机森林的组合进行了比较。还研究了用于树的初始化和节点拆分的各种策略,以及由此导致的R〜4F的集合大小,多样性和计算复杂性。

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