Our vision paper outlines a plan to improve the future of semantic interoperability in data spaces through the application of machine learning. The use of data spaces, where data is exchanged among members in a self-regulated environment, is becoming increasingly popular. However, the current manual practices of managing metadata and vocabularies in these spaces are time-consuming, prone to errors, and may not meet the needs of all stakeholders. By leveraging the power of machine learning, we believe that semantic interoperability in data spaces can be significantly improved. This involves automatically generating and updating metadata, which results in a more flexible vocabulary that can accommodate the diverse terminologies used by different sub-communities. Our vision for the future of data spaces addresses the limitations of conventional data exchange and makes data more accessible and valuable for all members of the community.
翻译:我们的愿景文件概述了通过应用机器学习来改善数据空间中语义互操作性的未来的计划。数据空间在成员之间在自我调节的环境中交换数据,对数据空间的使用正日益普及。然而,目前管理这些空间中元数据和词汇的手工做法耗费时间,容易出错,可能无法满足所有利益攸关方的需要。通过利用机器学习的力量,我们认为数据空间中的语义互操作性可以大大改善。这涉及自动生成和更新元数据,从而形成更加灵活的词汇,能够容纳不同分区使用的不同术语。我们对数据空间的未来的愿景解决了传统数据交换的局限性,并使数据对社区所有成员来说更加方便和宝贵。</s>