4.3 Article

The global environmental agenda urgently needs a semantic web of knowledge

期刊

ENVIRONMENTAL EVIDENCE
卷 11, 期 1, 页码 -

出版社

BMC
DOI: 10.1186/s13750-022-00258-y

关键词

Global challenges; Sustainability; Artificial intelligence; Semantics; Knowledge integration and synthesis

资金

  1. Basque Government through the BERC 2018-2021 program
  2. Ikertzaile Doktoreentzako Hobekuntzarako doktoretza-ondoko Programa
  3. Spanish Ministry of Economy and Competitiveness MINECO through BC3 Maria de Maeztu excellence accreditation [MDM-2017-0714]
  4. U.S. Geological Survey Land Change Science Program

向作者/读者索取更多资源

Progress in key social-ecological challenges of the global environmental agenda is hindered by a lack of integration and synthesis of existing scientific evidence. Artificial intelligence-based approaches, underpinned by semantics and machine reasoning, offer constructive solutions by enabling quick search, organization, reuse, combination, and synthesis of scientific information.
Progress in key social-ecological challenges of the global environmental agenda (e.g., climate change, biodiversity conservation, Sustainable Development Goals) is hampered by a lack of integration and synthesis of existing scientific evidence. Facing a fast-increasing volume of data, information remains compartmentalized to pre-defined scales and fields, rarely building its way up to collective knowledge. Today's distributed corpus of human intelligence, including the scientific publication system, cannot be exploited with the efficiency needed to meet current evidence synthesis challenges; computer-based intelligence could assist this task. Artificial Intelligence (AI)-based approaches underlain by semantics and machine reasoning offer a constructive way forward, but depend on greater understanding of these technologies by the science and policy communities and coordination of their use. By labelling web-based scientific information to become readable by both humans and computers, machines can search, organize, reuse, combine and synthesize information quickly and in novel ways. Modern open science infrastructure-i.e., public data and model repositories-is a useful starting point, but without shared semantics and common standards for machine actionable data and models, our collective ability to build, grow, and share a collective knowledge base will remain limited. The application of semantic and machine reasoning technologies by a broad community of scientists and decision makers will favour open synthesis to contribute and reuse knowledge and apply it toward decision making.

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