Enabling social WEB for IoT inducing ontologies from social tagging

Mohammed Alruqimi, N. Aknin
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引用次数: 1

Abstract

Semantic domain ontologies are increasingly seen as the key for enabling interoperability across heterogeneous systems and sensor-based applications. The ontologies deployed in these systems and applications are developed by restricted groups of domain experts and not by semantic web experts. Lately, folksonomies are increasingly exploited in developing ontologies. The “collective intelligence”, which emerge from collaborative tagging can be seen as an alternative for the current effort at semantic web ontologies. However, the uncontrolled nature of social tagging systems leads to many kinds of noisy annotations, such as misspellings, imprecision and ambiguity. Thus, the construction of formal ontologies from social tagging data remains a real challenge. Most of researches have focused on how to discover relatedness between tags rather than producing ontologies, much less domain ontologies. This paper proposed an algorithm that utilises tags in social tagging systems to automatically generate up-to-date specific-domain ontologies. The evaluation of the algorithm, using a dataset extracted from BibSonomy, demonstrated that the algorithm could effectively learn a domain terminology, and identify more meaningful semantic information for the domain terminology. Furthermore, the proposed algorithm introduced a simple and effective method for disambiguating tags.Semantic domain ontologies are increasingly seen as the key for enabling interoperability across heterogeneous systems and sensor-based applications. The ontologies deployed in these systems and applications are developed by restricted groups of domain experts and not by semantic web experts. Lately, folksonomies are increasingly exploited in developing ontologies. The “collective intelligence”, which emerge from collaborative tagging can be seen as an alternative for the current effort at semantic web ontologies. However, the uncontrolled nature of social tagging systems leads to many kinds of noisy annotations, such as misspellings, imprecision and ambiguity. Thus, the construction of formal ontologies from social tagging data remains a real challenge. Most of researches have focused on how to discover relatedness between tags rather than producing ontologies, much less domain ontologies. This paper proposed an algorithm that utilises tags in social tagging systems to automatically generate up-to-date specific-domain ontologies. The evaluation of the algorithm, using a dataset extracted from BibSonomy, demonstrated that the algorithm could effectively learn a domain terminology, and identify more meaningful semantic information for the domain terminology. Furthermore, the proposed algorithm introduced a simple and effective method for disambiguating tags.
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通过社交标签为物联网诱导本体启用社交WEB
语义领域本体越来越被视为跨异构系统和基于传感器的应用程序实现互操作性的关键。部署在这些系统和应用程序中的本体是由有限的领域专家小组开发的,而不是由语义web专家开发的。最近,大众分类法越来越多地用于开发本体论。协作标签产生的“集体智慧”可以看作是当前语义网络本体的另一种选择。然而,社会标签系统的不可控特性导致了各种各样的嘈杂注释,如拼写错误、不精确和歧义。因此,从社会标签数据构建形式化本体仍然是一个真正的挑战。大多数的研究都集中在如何发现标签之间的相关性,而不是产生本体,更不用说产生领域本体。本文提出了一种利用社会标签系统中的标签自动生成最新的特定领域本体的算法。利用BibSonomy提取的数据集对算法进行了评价,结果表明该算法能够有效地学习领域术语,并为领域术语识别出更多有意义的语义信息。此外,该算法还引入了一种简单有效的标签消歧方法。语义领域本体越来越被视为跨异构系统和基于传感器的应用程序实现互操作性的关键。部署在这些系统和应用程序中的本体是由有限的领域专家小组开发的,而不是由语义web专家开发的。最近,大众分类法越来越多地用于开发本体论。协作标签产生的“集体智慧”可以看作是当前语义网络本体的另一种选择。然而,社会标签系统的不可控特性导致了各种各样的嘈杂注释,如拼写错误、不精确和歧义。因此,从社会标签数据构建形式化本体仍然是一个真正的挑战。大多数的研究都集中在如何发现标签之间的相关性,而不是产生本体,更不用说产生领域本体。本文提出了一种利用社会标签系统中的标签自动生成最新的特定领域本体的算法。利用BibSonomy提取的数据集对算法进行了评价,结果表明该算法能够有效地学习领域术语,并为领域术语识别出更多有意义的语义信息。此外,该算法还引入了一种简单有效的标签消歧方法。
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