统计关系模型的工程SLS算法

M. Biba, F. Xhafa, F. Esposito, S. Ferilli
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引用次数: 3

摘要

我们提出了用于马尔可夫逻辑网络(mln)学习和推理的高性能SLS算法。mln是一种集成了一阶逻辑和概率的最先进的表示形式。由于一阶逻辑的表达能力导致候选向量的组合空间,使得学习mln结构变得困难。我们介绍了基于迭代局部搜索(ILS)元启发式的学习mln算法的当前工作。在现实领域的实验表明,与现有的最先进的算法相比,所提出的方法提高了准确性和学习时间。此外,MAP和条件推理在mln中的计算难度也很大。本文提出了基于迭代鲁棒禁忌搜索(irot)模式的两种算法。第一种算法通过在ILS迭代中执行rot搜索来执行MAP推理。大量的实验表明,它在求解质量和推理时间方面都优于目前最先进的算法。第二种算法将irot与条件推理的模拟退火相结合,我们通过实验表明,它比当前最先进的算法更快,保持相同的推理质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Engineering SLS Algorithms for Statistical Relational Models
We present high performing SLS algorithms for learning and inference in Markov Logic Networks (MLNs). MLNs are a state-of-the-art representation formalism that integrates first-order logic and probability. Learning MLNs structure is hard due to the combinatorial space of candidates caused by the expressive power of first-order logic. We present current work on the development of algorithms for learning MLNs, based on the Iterated Local Search (ILS) metaheuristic. Experiments in real-world domains show that the proposed approach improves accuracy and learning time over the existing state-of-the-art algorithms. Moreover, MAP and conditional inference in MLNs are hard computational tasks too. This paper presents two algorithms for these tasks based on the Iterated Robust Tabu Search (IRoTS) schema. The first algorithm performs MAP inference by performing a RoTS search within a ILS iteration. Extensive experiments show that it improves over the state-of the-art algorithm in terms of solution quality and inference times. The second algorithm combines IRoTS with simulated annealing for conditional inference and we show through experiments that it is faster than the current state-of-the-art algorithm maintaining the same inference quality.
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