用于归纳逻辑编程的可微分一阶规则学习器

IF 5.1 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Artificial Intelligence Pub Date : 2024-03-15 DOI:10.1016/j.artint.2024.104108
Kun Gao , Katsumi Inoue , Yongzhi Cao , Hanpin Wang
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引用次数: 0

摘要

从关系事实中学习一阶逻辑程序可以获得对数据的直观见解。归纳逻辑编程(ILP)模型能有效地从观察到的关系数据中学习一阶逻辑程序。符号 ILP 模型以数据高效的方式支持规则学习。然而,符号 ILP 模型在从嘈杂数据中学习时并不稳定。神经符号 ILP 模型利用神经网络以可微分的方式学习逻辑程序,从而提高了 ILP 模型的鲁棒性。然而,大多数神经符号方法需要强烈的语言偏向来学习逻辑程序,这降低了 ILP 模型的可用性和灵活性,并限制了逻辑程序的格式。此外,大多数神经符号 ILP 方法无法从小型数据集和大型数据集(如知识图谱)中有效地学习逻辑程序。在本文中,我们介绍了一种新颖的可微分 ILP 模型--可微分一阶规则学习器(DFORL),它具有可扩展性,既能从较小的数据集学习规则,也能从较大的数据集学习规则。此外,DFORL 只需要将所学逻辑程序中的变量数量作为输入。因此,DFORL 易于使用,而且不需要强烈的语言倾向。我们证明,DFORL 可以在多个标准 ILP 数据集、知识图谱和概率关系事实上表现出色,并优于多个著名的可微分 ILP 模型。实验结果表明,DFORL 是一种精确、稳健、可扩展且计算成本低廉的可微分 ILP 模型。
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A differentiable first-order rule learner for inductive logic programming

Learning first-order logic programs from relational facts yields intuitive insights into the data. Inductive logic programming (ILP) models are effective in learning first-order logic programs from observed relational data. Symbolic ILP models support rule learning in a data-efficient manner. However, symbolic ILP models are not robust to learn from noisy data. Neuro-symbolic ILP models utilize neural networks to learn logic programs in a differentiable manner which improves the robustness of ILP models. However, most neuro-symbolic methods need a strong language bias to learn logic programs, which reduces the usability and flexibility of ILP models and limits the logic program formats. In addition, most neuro-symbolic ILP methods cannot learn logic programs effectively from both small-size datasets and large-size datasets such as knowledge graphs. In the paper, we introduce a novel differentiable ILP model called differentiable first-order rule learner (DFORL), which is scalable to learn rules from both smaller and larger datasets. Besides, DFORL only needs the number of variables in the learned logic programs as input. Hence, DFORL is easy to use and does not need a strong language bias. We demonstrate that DFORL can perform well on several standard ILP datasets, knowledge graphs, and probabilistic relation facts and outperform several well-known differentiable ILP models. Experimental results indicate that DFORL is a precise, robust, scalable, and computationally cheap differentiable ILP model.

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来源期刊
Artificial Intelligence
Artificial Intelligence 工程技术-计算机:人工智能
CiteScore
11.20
自引率
1.40%
发文量
118
审稿时长
8 months
期刊介绍: The Journal of Artificial Intelligence (AIJ) welcomes papers covering a broad spectrum of AI topics, including cognition, automated reasoning, computer vision, machine learning, and more. Papers should demonstrate advancements in AI and propose innovative approaches to AI problems. Additionally, the journal accepts papers describing AI applications, focusing on how new methods enhance performance rather than reiterating conventional approaches. In addition to regular papers, AIJ also accepts Research Notes, Research Field Reviews, Position Papers, Book Reviews, and summary papers on AI challenges and competitions.
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