
大数据知识工程发展现状及展望
Development and Prospect of Big Data Knowledge Engineering
大数据知识工程是人工智能的“基础设施”、诸多行业和领域面临的共性需求、信息化迈向智能化的必由之路。本文阐述了大数据知识工程产生的背景与概念内涵,提出了“数据知识化、知识体系化、知识可推理”的研究框架;梳理了知识获取与融合、知识表征、知识推理等大数据知识工程关键技术和智慧教育、税务风险管控、智慧医疗等典型场景中的工程应用;总结了大数据知识工程面临的挑战,研判了大数据知识工程的未来研究方向,包括复杂大数据知识获取、知识+数据混合学习、脑启发知识编码记忆等。研究建议,引导多学科交叉融合,设立重大和重点研发专项,推动大数据知识工程基础理论与技术攻关;加强企业和研究机构间交流合作,推广前沿研究成果并形成应用示范,建立大数据知识工程行业标准体系;以重大需求应用为导向,探索校企协同育人模式,加快大数据知识工程技术在重要行业的落地应用。
Big Data Knowledge Engineering is the infrastructure of artificial intelligence, a common requirement faced by various industries and fields, and the inevitable path for the digitalization to intelligence. In this paper, we firstly elaborate on the background and connotation of big data knowledge engineering and propose a research framework of "data knowledgeization, knowledge systematization, and knowledge reasoning". Secondly, we sort out the key technologies of knowledge acquisition and fusion, knowledge representation, and knowledge reasoning and introduce engineering applications in typical scenarios such as smart education, tax risk control, and smart healthcare. Thirdly, we summary the challenges faced by big data knowledge engineering and predict the future research directions including complex big data knowledge acquisition, knowledge+data hybrid learning, and brain-inspired knowledge coding and memorizing. Finally, several suggestions are given by the research: guiding interdisciplinary integration and establishing major and key R&D projects to promote the basic theory and technological breakthroughs of big data knowledge engineering; strengthening communication and cooperation between enterprises and research institutions as well as promoting cutting-edge research results to form application demonstrations, so as to establish an industry-standard system for big data knowledge engineering; exploring school-enterprise cooperation in line with market demands, orienting towards major application needs, and accelerating the landing application of big data knowledge engineering technology in the country's important industries.
大数据知识工程 / 知识获取 / 知识融合 / 知识表征 / 知识推理
Big Data Knowledge Engineering / Knowledge Acquisition / Knowledge Fusion / Knowledge Representation / Knowledge Reasoning
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