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Machine Learning for the Semantic Web: Lessons learnt and next research directions

机译:机器学习的语义网络:经验教训和下一个研究方向

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摘要

Machine Learning methods have been introduced in the Semantic Web for solving problems such as link and type prediction, ontology enrichment and completion (both at terminological and assertional level). Whilst initially mainly focussing on symbol-based solutions, recently numeric-based approaches have received major attention, motivated by the need to scale on the very large Web of Data. In this paper, the most representative proposals, belonging to the aforementioned categories are surveyed, jointly with the analysis of their main peculiarities and drawbacks. Afterwards the main envisioned research directions for further developing Machine Learning solutions for the Semantic Web are presented.
机译:机器学习方法已在语义网络中引入,以解决链路和型预测,本体富集和完成等问题(术语在术语和分子水平)中。 虽然最初主要关注基于符号的解决方案,但最近的基于数字的方法已经获得了重大关注,而且需要在非常大的数据网络上缩放的需要。 本文认为,属于上述类别的最具代表性的建议,共同调查了他们的主要特点和缺点。 之后提出了用于进一步开发语义网络的进一步开发机器学习解决方案的主要设想的研究方向。

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