Neuro-symbolic Architectures for Context Understanding

A. Oltramari, Jonathan M Francis, C. Henson, Kaixin Ma, Ruwan Wickramarachchi
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引用次数: 17

Abstract

Computational context understanding refers to an agent's ability to fuse disparate sources of information for decision-making and is, therefore, generally regarded as a prerequisite for sophisticated machine reasoning capabilities, such as in artificial intelligence (AI). Data-driven and knowledge-driven methods are two classical techniques in the pursuit of such machine sense-making capability. However, while data-driven methods seek to model the statistical regularities of events by making observations in the real-world, they remain difficult to interpret and they lack mechanisms for naturally incorporating external knowledge. Conversely, knowledge-driven methods, combine structured knowledge bases, perform symbolic reasoning based on axiomatic principles, and are more interpretable in their inferential processing; however, they often lack the ability to estimate the statistical salience of an inference. To combat these issues, we propose the use of hybrid AI methodology as a general framework for combining the strengths of both approaches. Specifically, we inherit the concept of neuro-symbolism as a way of using knowledge-bases to guide the learning progress of deep neural networks. We further ground our discussion in two applications of neuro-symbolism and, in both cases, show that our systems maintain interpretability while achieving comparable performance, relative to the state-of-the-art.
上下文理解的神经符号体系结构
计算上下文理解是指代理融合不同信息源进行决策的能力,因此通常被认为是复杂机器推理能力的先决条件,例如人工智能(AI)。数据驱动方法和知识驱动方法是追求这种机器感知能力的两种经典方法。然而,虽然数据驱动的方法试图通过在现实世界中进行观察来模拟事件的统计规律,但它们仍然难以解释,并且缺乏自然地吸收外部知识的机制。相反,知识驱动方法结合结构化知识库,基于公理原则进行符号推理,在推理处理中更具可解释性;然而,他们往往缺乏估计推断的统计显著性的能力。为了解决这些问题,我们建议使用混合人工智能方法作为结合两种方法优势的一般框架。具体来说,我们继承了神经符号的概念,作为一种使用知识库来指导深度神经网络学习过程的方法。我们进一步讨论了神经象征主义的两种应用,并在这两种情况下,表明我们的系统在保持可解释性的同时,实现了与最先进的性能相当的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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