张德祥 (2023-02-10 20:03):
#paper https://doi.org/10.48550/arXiv.2210.15889 Towards Data-and Knowledge-Driven Artificial Intelligence: A Survey on Neuro-Symbolic Computing 神经符号计算 (NeSy) 追求认知的符号和统计范式的整合,多年来一直是人工智能 (AI) 的活跃研究领域。由于 NeSy 有望调和符号表示的推理和可解释性优势以及神经网络中的稳健学习,它可能会成为下一代 AI 的催化剂。在本文中,我们系统地概述了 NeSy AI 研究的重要和最新进展。首先,我们介绍了这一领域的研究历史,涵盖了早期的工作和基础。我们进一步讨论背景概念并确定 NeSy 发展背后的关键驱动因素。之后,我们根据强调该研究范式的几个主要特征对最近具有里程碑意义的方法进行了分类,包括神经符号整合、知识表示、知识嵌入和功能。然后,我们简要讨论现代 NeSy 方法在几个领域的成功应用。最后,我们确定了未解决的问题以及潜在的未来研究方向。这项调查有望帮助新的研究人员进入这个快速发展的领域,并加速向数据和知识驱动的 AI 迈进。
Towards Data-and Knowledge-Driven Artificial Intelligence: A Survey on Neuro-Symbolic Computing
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Abstract:
Neural-symbolic computing (NeSy), which pursues the integration of the symbolic and statistical paradigms of cognition, has been an active research area of Artificial Intelligence (AI) for many years. As NeSy shows promise of reconciling the advantages of reasoning and interpretability of symbolic representation and robust learning in neural networks, it may serve as a catalyst for the next generation of AI. In the present paper, we provide a systematic overview of the important and recent developments of research on NeSy AI. Firstly, we introduce study history of this area, covering early work and foundations. We further discuss background concepts and identify key driving factors behind the development of NeSy. Afterward, we categorize recent landmark approaches along several main characteristics that underline this research paradigm, including neural-symbolic integration, knowledge representation, knowledge embedding, and functionality. Then, we briefly discuss the successful application of modern NeSy approaches in several domains. Finally, we identify the open problems together with potential future research directions. This survey is expected to help new researchers enter this rapidly-developing field and accelerate progress towards data-and knowledge-driven AI.
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