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mlCAF: Multi-Level Cross-Domain Semantic Context Fusioning for Behavior Identification

机译:mlCAF:用于行为识别的多级跨域语义上下文融合

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摘要

The emerging research on automatic identification of user’s contexts from the cross-domain environment in ubiquitous and pervasive computing systems has proved to be successful. Monitoring the diversified user’s contexts and behaviors can help in controlling lifestyle associated to chronic diseases using context-aware applications. However, availability of cross-domain heterogeneous contexts provides a challenging opportunity for their fusion to obtain abstract information for further analysis. This work demonstrates extension of our previous work from a single domain (i.e., physical activity) to multiple domains (physical activity, nutrition and clinical) for context-awareness. We propose multi-level Context-aware Framework (mlCAF), which fuses the multi-level cross-domain contexts in order to arbitrate richer behavioral contexts. This work explicitly focuses on key challenges linked to multi-level context modeling, reasoning and fusioning based on the mlCAF open-source ontology. More specifically, it addresses the interpretation of contexts from three different domains, their fusioning conforming to richer contextual information. This paper contributes in terms of ontology evolution with additional domains, context definitions, rules and inclusion of semantic queries. For the framework evaluation, multi-level cross-domain contexts collected from 20 users were used to ascertain abstract contexts, which served as basis for behavior modeling and lifestyle identification. The experimental results indicate a context recognition average accuracy of around 92.65% for the collected cross-domain contexts.
机译:事实证明,在普遍存在的计算系统中从跨域环境自动识别用户上下文的新兴研究已经成功。监视多样化的用户的上下文和行为可以使用上下文感知应用程序来帮助控制与慢性病相关的生活方式。但是,跨域异构上下文的可用性为它们融合以获得抽象信息以进行进一步分析提供了具有挑战性的机会。这项工作展示了我们以前的工作从单一领域(即体育活动)到多个领域(体育活动,营养和临床)的扩展,以用于情境感知。我们提出了多级上下文感知框架(mlCAF),该框架融合了多级跨域上下文以仲裁更丰富的行为上下文。这项工作明确地集中在与基于mlCAF开源本体的多级上下文建模,推理和融合相关的关键挑战。更具体地说,它解决了来自三个不同领域的上下文解释,它们的融合符合更丰富的上下文信息。本文在本体扩展方面做出了贡献,其中包括其他领域,上下文定义,规则和语义查询的包含。为了进行框架评估,使用了从20个用户那里收集的多级跨域上下文来确定抽象上下文,这些上下文是行为建模和生活方式识别的基础。实验结果表明,对于所收集的跨域上下文,上下文识别的平均准确度约为92.65%。

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