神经符号分类技术的概率推理复杂性

Arthur Ledaguenel, Céline Hudelot, Mostepha Khouadjia
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引用次数: 0

摘要

神经符号人工智能是一个不断发展的研究领域,旨在将神经网络学习能力与符号系统的推理能力相结合。知情多标签分类是神经符号人工智能的一个子领域,它研究如何利用先验知识来改进神经分类系统。众所周知,用于知情分类的神经符号技术家族在学习、推理或两者过程中使用概率推理来整合这些知识。因此,概率推理的渐进复杂性对于评估此类技术的可扩展性至关重要。然而,神经符号学文献很少涉及这一主题,这可能导致人们对概率神经符号技术的局限性理解不深。在本文中,我们介绍了知情监督分类任务和技术的形式主义。然后,我们在此形式主义的基础上定义了三种基于概率推理的抽象神经符号技术。最后,我们展示了神经符号文献中常见的几种先验知识表示语言的计算复杂度结果。
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Complexity of Probabilistic Reasoning for Neurosymbolic Classification Techniques
Neurosymbolic artificial intelligence is a growing field of research aiming to combine neural network learning capabilities with the reasoning abilities of symbolic systems. Informed multi-label classification is a sub-field of neurosymbolic AI which studies how to leverage prior knowledge to improve neural classification systems. A well known family of neurosymbolic techniques for informed classification use probabilistic reasoning to integrate this knowledge during learning, inference or both. Therefore, the asymptotic complexity of probabilistic reasoning is of cardinal importance to assess the scalability of such techniques. However, this topic is rarely tackled in the neurosymbolic literature, which can lead to a poor understanding of the limits of probabilistic neurosymbolic techniques. In this paper, we introduce a formalism for informed supervised classification tasks and techniques. We then build upon this formalism to define three abstract neurosymbolic techniques based on probabilistic reasoning. Finally, we show computational complexity results on several representation languages for prior knowledge commonly found in the neurosymbolic literature.
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