Neuro-Symbolic Semantic Reasoning

B. Makni, Monireh Ebrahimi, Dagmar Gromann, Aaron Eberhart
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引用次数: 1

Abstract

Humans have astounding reasoning capabilities. They can learn from very few examples while providing explanations for their decision-making process. In contrast, deep learning techniques–even though robust to noise and very effective in generalizing across several fields including machine vision, natural language understanding, speech recognition, etc. –require large amounts of data and are mostly unable to provide explanations for their decisions. Attaining human-level robust reasoning requires combining sound symbolic reasoning with robust connectionist learning. However, connectionist learning uses low-level representations–such as embeddings–rather than symbolic representations. This challenge constitutes what is referred to as the Neuro-Symbolic gap. A field of study to bridge this gap between the two paradigms has been called neuro-symbolic integration or neuro-symbolic computing. This chapter aims to present approaches that contribute towards bridging the Neuro-Symbolic gap specifically in the Semantic Web field, RDF Schema (RDFS) and EL+ reasoning and to discuss the benefits and shortcomings of neuro-symbolic reasoning.
神经符号语义推理
人类有惊人的推理能力。他们可以从很少的例子中学习,同时为他们的决策过程提供解释。相比之下,深度学习技术——尽管对噪声具有鲁棒性,并且在包括机器视觉、自然语言理解、语音识别等多个领域的泛化方面非常有效——需要大量的数据,而且大多无法为其决策提供解释。达到人类水平的健全推理需要将健全的符号推理与健全的连接主义学习相结合。然而,连接主义学习使用低级表征——比如嵌入——而不是符号表征。这种挑战构成了所谓的神经-符号鸿沟。在这两种范式之间建立桥梁的一个研究领域被称为神经符号整合或神经符号计算。本章旨在介绍有助于弥合神经符号鸿沟的方法,特别是在语义网领域,RDF模式(RDFS)和EL+推理,并讨论神经符号推理的优点和缺点。
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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