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Efficient Relational Learning with Hidden Variable Detection

机译:隐藏变量检测的高效关系学习

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Markov networks (MNs) can incorporate arbitrarily complex features in modeling relational data. However, this flexibility comes at a sharp price of training an exponentially complex model. To address this challenge, we propose a novel relational learning approach, which consists of a restricted class of relational MNs (RMNs) called relation tree-based RMN (treeRMN), and an efficient Hidden Variable Detection algorithm called Contrastive Variable Induction (CVI). On one hand, the restricted treeRMN only considers simple (e.g., unary and pairwise) features in relational data and thus achieves computational efficiency; and on the other hand, the CVI algorithm efficiently detects hidden variables which can capture long range dependencies. Therefore, the resultant approach is highly efficient yet does not sacrifice its expressive power. Empirical results on four real datasets show that the proposed relational learning method can achieve similar prediction quality as the state-of-the-art approaches, but is significantly more efficient in training; and the induced hidden variables are semantically meaningful and crucial to improve the training speed and prediction qualities of treeRMNs.
机译:马尔可夫网络(MN)可以在对关系数据进行建模时纳入任意复杂的特征。但是,这种灵活性是以训练指数级复杂模型为代价的。为了解决这一挑战,我们提出了一种新颖的关系学习方法,该方法包括一类受限的关系MN(RMN),称为基于关系树的RMN(treeRMN),以及一种有效的隐式变量检测算法,称为Contrastive Variable Induction(CVI)。一方面,受限treeRMN仅考虑关系数据中的简单(例如,一元和成对)特征,从而实现了计算效率;另一方面,CVI算法有效地检测了可以捕获长期依赖关系的隐藏变量。因此,所得方法是高效的,但不会牺牲其表达能力。在四个真实数据集上的经验结果表明,所提出的关系学习方法可以达到与最新方法相似的预测质量,但是在训练上效率明显更高。并且所产生的隐藏变量在语义上是有意义的,对于提高treeRMN的训练速度和预测质量至关重要。

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