超图计算

IF 10.1 1区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY Engineering Pub Date : 2024-09-01 DOI:10.1016/j.eng.2024.04.017
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引用次数: 0

摘要

互联网、社交网络和生物网络等现实世界的实际场景面临着数据稀缺和复杂关联的挑战,这限制了人工智能的应用。图结构是表述这种相关性的典型工具,但它无法模拟系统中不同对象之间的高阶相关性,因此图结构无法完全表达对象之间错综复杂的相关性。面对上述两个挑战,超图计算通过超通道对数据、知识和规则之间的高阶相关性进行建模,并利用这些高阶相关性来增强数据。此外,超图计算还能利用数据和高阶相关性实现协同计算,从而提供更大的建模灵活性。我们特别介绍了三种超图计算方法:①超图结构建模;②超图语义计算;③高效超图计算。然后,我们以三维(3D)物体识别等特定任务为重点,具体说明了如何在实践中采用超图计算,并揭示了与传统的基于数据的方法相比,超图计算可以减少 80% 的数据需求,同时在相同数据条件下实现相当的性能或提高 52% 的性能。我们还全面概述了超图计算在智能医学和计算机视觉等不同领域的应用。最后,我们介绍了一个开源深度学习库--DeepHypergraph(DHG),它可以作为超图计算的实际应用工具。
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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Hypergraph Computation

Practical real-world scenarios such as the Internet, social networks, and biological networks present the challenges of data scarcity and complex correlations, which limit the applications of artificial intelligence. The graph structure is a typical tool used to formulate such correlations, it is incapable of modeling high-order correlations among different objects in systems; thus, the graph structure cannot fully convey the intricate correlations among objects. Confronted with the aforementioned two challenges, hypergraph computation models high-order correlations among data, knowledge, and rules through hyperedges and leverages these high-order correlations to enhance the data. Additionally, hypergraph computation achieves collaborative computation using data and high-order correlations, thereby offering greater modeling flexibility. In particular, we introduce three types of hypergraph computation methods: ① hypergraph structure modeling, ② hypergraph semantic computing, and ③ efficient hypergraph computing. We then specify how to adopt hypergraph computation in practice by focusing on specific tasks such as three-dimensional (3D) object recognition, revealing that hypergraph computation can reduce the data requirement by 80% while achieving comparable performance or improve the performance by 52% given the same data, compared with a traditional data-based method. A comprehensive overview of the applications of hypergraph computation in diverse domains, such as intelligent medicine and computer vision, is also provided. Finally, we introduce an open-source deep learning library, DeepHypergraph (DHG), which can serve as a tool for the practical usage of hypergraph computation.

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来源期刊
Engineering
Engineering Environmental Science-Environmental Engineering
自引率
1.60%
发文量
335
审稿时长
35 days
期刊介绍: Engineering, an international open-access journal initiated by the Chinese Academy of Engineering (CAE) in 2015, serves as a distinguished platform for disseminating cutting-edge advancements in engineering R&D, sharing major research outputs, and highlighting key achievements worldwide. The journal's objectives encompass reporting progress in engineering science, fostering discussions on hot topics, addressing areas of interest, challenges, and prospects in engineering development, while considering human and environmental well-being and ethics in engineering. It aims to inspire breakthroughs and innovations with profound economic and social significance, propelling them to advanced international standards and transforming them into a new productive force. Ultimately, this endeavor seeks to bring about positive changes globally, benefit humanity, and shape a new future.
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