用有限数量的标记训练样本学习马尔可夫逻辑网络

Tak-Lam Wong
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引用次数: 3

摘要

马尔可夫逻辑网络(MLN)是一阶逻辑和概率推理相结合的统一框架。大多数现有的MLN学习方法都是监督方法,需要大量的训练样例,导致大量的人力来准备这些训练样例。为了减少这种人工努力,我们开发了一个半监督框架,用于从一组未标记的数据和有限数量的标记训练样例中学习MLN,特别是MLN的结构学习。为了实现这一点,我们的目标是最大化未标记数据集的观测值的期望伪对数似然函数,而不是最大化标记训练样例的伪对数似然函数,这在MLN的监督学习中是常用的。为了评估我们提出的方法,我们在两个不同的数据集上进行了实验,经验结果表明我们的框架是有效的,优于仅考虑标记训练样例的现有方法。
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Learning Markov logic networks with limited number of labeled training examples
Markov Logic Networks (MLN) is a unified framework integrating first-order logic and probabilistic inference. Most existing methods of MLN learning are supervised approaches requiring a large amount of training examples, leading to a substantial amount of human effort for preparing these training examples. To reduce such human effort, we have developed a semi-supervised framework for learning an MLN, in particular structure learning of MLN, from a set of unlabeled data and a limited number of labeled training examples. To achieve this, we aim at maximizing the expected pseudo-log-likelihood function of the observation from the set of unlabeled data, instead of maximizing the pseudo-log-likelihood function of the labeled training examples, which is commonly used in supervised learning of MLN. To evaluate our proposed method, we have conducted experiments on two different datasets and the empirical results demonstrate that our framework is effective, outperforming existing approach which considers labeled training examples alone.
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