论文标题

符号逻辑符合机器学习:无限域中的简短调查

Symbolic Logic meets Machine Learning: A Brief Survey in Infinite Domains

论文作者

Belle, Vaishak

论文摘要

扣除与归纳之间的张力可能是哲学,认知和人工智能(AI)等领域中最根本的问题。推论营地涉及有关形式语言捕获有关世界知识的表现力的问题,以及从这种知识基础上推理的证明系统。学习营试图从有关世界的部分描述的例子中概括。从历史上看,这些营地在AI中逐渐划分了该领域的发展,但是诸如统计关系学习,神经符号系统和高级控制等跨界领域的进步表明,二分法不是很建设性,甚至可能是不明式的。在本文中,我们调查工作为逻辑与学习之间的联系提供了进一步的证据。我们的叙述是根据三个方面结构的:逻辑与学习,逻辑的机器学习以及用于机器学习的逻辑,但自然而然地存在相当大的重叠。我们将重点放在以下“酸痛”点上:常见的误解是逻辑是离散属性的,而概率理论和机器学习则是连续属性的。我们报告了对逻辑局限性挑战的结果报告,并揭示逻辑可以在无限域中学习的作用。

The tension between deduction and induction is perhaps the most fundamental issue in areas such as philosophy, cognition and artificial intelligence (AI). The deduction camp concerns itself with questions about the expressiveness of formal languages for capturing knowledge about the world, together with proof systems for reasoning from such knowledge bases. The learning camp attempts to generalize from examples about partial descriptions about the world. In AI, historically, these camps have loosely divided the development of the field, but advances in cross-over areas such as statistical relational learning, neuro-symbolic systems, and high-level control have illustrated that the dichotomy is not very constructive, and perhaps even ill-formed. In this article, we survey work that provides further evidence for the connections between logic and learning. Our narrative is structured in terms of three strands: logic versus learning, machine learning for logic, and logic for machine learning, but naturally, there is considerable overlap. We place an emphasis on the following "sore" point: there is a common misconception that logic is for discrete properties, whereas probability theory and machine learning, more generally, is for continuous properties. We report on results that challenge this view on the limitations of logic, and expose the role that logic can play for learning in infinite domains.

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