首页> 外文会议>Annual conference on Neural Information Processing Systems >Slice Normalized Dynamic Markov Logic Networks
【24h】

Slice Normalized Dynamic Markov Logic Networks

机译:切片归一化动态马尔可夫逻辑网络

获取原文

摘要

Markov logic is a widely used tool in statistical relational learning, which uses a weighted first-order logic knowledge base to specify a Markov random field (MRF) or a conditional random field (CRF). In many applications, a Markov logic network (MLN) is trained in one domain, but used in a different one. This paper focuses on dynamic Markov logic networks, where the size of the discretized time-domain typically varies between training and testing. It has been previously pointed out that the marginal probabilities of truth assignments to ground atoms can change if one extends or reduces the domains of predicates in an MLN. We show that in addition to this problem, the standard way of unrolling a Markov logic theory into a MRF may result in time-inhomogeneity of the underlying Markov chain. Furthermore, even if these representational problems are not significant for a given domain, we show that the more practical problem of generating samples in a sequential conditional random field for the next slice relying on the samples from the previous slice has high computational cost in the general case, due to the need to estimate a normalization factor for each sample. We propose a new discriminative model, slice normalized dynamic Markov logic networks (SN-DMLN), that suffers from none of these issues. It supports efficient online inference, and can directly model influences between variables within a time slice that do not have a causal direction, in contrast with fully directed models (e.g., DBNs). Experimental results show an improvement in accuracy over previous approaches to online inference in dynamic Markov logic networks.
机译:马尔可夫逻辑是统计关系学习中广泛使用的工具,它使用加权的一阶逻辑知识库来指定马尔可夫随机字段(MRF)或条件随机字段(CRF)。在许多应用中,马尔可夫逻辑网络(MLN)在一个域中训练,但在另一个域中使用。本文关注于动态马尔可夫逻辑网络,其中离散时域的大小通常在训练和测试之间变化。先前已经指出,如果扩展或减少MLN中谓词的域,则对基础原子的真值分配的边际概率可能会发生变化。我们表明,除了这个问题之外,将马尔可夫逻辑理论展开为MRF的标准方法还可能导致底层马尔可夫链的时间不均匀性。此外,即使这些表示问题对于给定的域而言并不重要,我们也显示出更实际的问题,即依赖下一个切片的样本在下一个切片的顺序条件随机字段中生成样本通常具有较高的计算成本。在这种情况下,由于需要估计每个样本的归一化因子。我们提出了一种新的判别模型,即切片归一化动态马尔可夫逻辑网络(SN-DMLN),该模型不受这些问题的困扰。与完全定向的模型(例如DBN)相比,它支持有效的在线推断,并且可以直接对时间片中没有因果关系的变量之间的影响进行建模。实验结果表明,与动态马尔可夫逻辑网络中以前的在线推理方法相比,准确性有所提高。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号