基于上下文增强知识融合的思维空间生成

IF 0.2 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Web Intelligence Pub Date : 2023-05-26 DOI:10.3233/web-220089
Hongzhi Kuai, Xiao‐Rong Tao, Ning Zhong
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引用次数: 0

摘要

在当前的大脑大数据时代,系统神经科学与开放科学的融合引起了人们的极大兴趣,突出了智能体处理多源知识、信息和数据的跨粒度思维能力。为了在脑研究过程中实现这种思维启发的脑计算,主要挑战之一是找到一个整体的脑图,可以综合模拟脑功能、实验任务、脑数据和分析方法等脑研究的多维变量。在本文中,我们提出了一种上下文增强的图学习方法来融合不同来源的开放知识,包括:上下文信息富集、结构知识融合和整体图学习。这种方法可以增强抽象概念的语境学习和两个概念之间在不同维度上存在较大差距的关系学习。因此,生成了一个可扩展的空间,即思维空间,用于在地图中表示整体变量及其关系,目前有助于大脑研究领域的系统脑计算。未来,随着人工智能生成内容的快速发展和传播,思维空间将在更多场景中得到发展,从而促进智能在互联世界中的全球互动。
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Thinking space generation using context-enhanced knowledge fusion for systematic brain computing
The convergence of systems neuroscience and open science arouses great interest in the current brain big data era, highlighting the thinking capability of intelligent agents in handling multi-source knowledge, information and data across various levels of granularity. To realize such thinking-inspired brain computing during a brain investigation process, one of the major challenges is to find a holistic brain map that can model multi-dimensional variables of brain investigations across brain functions, experimental tasks, brain data and analytical methods synthetically. In this paper, we propose a context-enhanced graph learning method to fuse open knowledge from different sources, including: contextual information enrichment, structural knowledge fusion, and holistic graph learning. Such a method can enhance contextual learning of abstract concepts and relational learning between two concepts that have large gap from different dimensions. As a result, an extensible space, namely Thinking Space, is generated to represent holistic variables and their relations in a map, which currently contributes to the field of brain research for systematic brain computing. In the future, the Thinking Space coupled with the rapid development and spread of artificial intelligence generated content will be developed in more scenarios so as to promote global interactions of intelligence in the connected world.
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来源期刊
Web Intelligence
Web Intelligence COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
0.90
自引率
0.00%
发文量
35
期刊介绍: Web Intelligence (WI) is an official journal of the Web Intelligence Consortium (WIC), an international organization dedicated to promoting collaborative scientific research and industrial development in the era of Web intelligence. WI seeks to collaborate with major societies and international conferences in the field. WI is a peer-reviewed journal, which publishes four issues a year, in both online and print form. WI aims to achieve a multi-disciplinary balance between research advances in theories and methods usually associated with Collective Intelligence, Data Science, Human-Centric Computing, Knowledge Management, and Network Science. It is committed to publishing research that both deepen the understanding of computational, logical, cognitive, physical, and social foundations of the future Web, and enable the development and application of technologies based on Web intelligence. The journal features high-quality, original research papers (including state-of-the-art reviews), brief papers, and letters in all theoretical and technology areas that make up the field of WI. The papers should clearly focus on some of the following areas of interest: a. Collective Intelligence[...] b. Data Science[...] c. Human-Centric Computing[...] d. Knowledge Management[...] e. Network Science[...]
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