In recent years, the world has witnessed various primitives pertaining to the complexity of human behavior. Identifying an event in the presence of insufficient, incomplete, or tentative premises along with the constraints on resources such as time, data and memory is a vital aspect of an intelligent system. Data explosion presents one of the most challenging research issues for intelligent systems; to optimally represent and store this heterogeneous and voluminous data semantically to provide human behavior. There is a requirement of intelligent but personalized human behavior subject to constraints on resources and priority of the user. Knowledge, when represented in the form of an ontology, procures an intelligent response to a query posed by users; but it does not offer content in accordance with the user context. To this aim, we propose a model to quantify the user context and provide semantic contextual reasoning. A diagnostic belief algorithm (DBA) is also presented that identifies a given event and also computes the confidence of the decision as a function of available resources, premises, exceptions, and desired specificity. We conduct an empirical study in the domain of day-to-day routine queries and the experimental results show that the answer to queries and also its confidence varies with user context.
翻译:近年来,世界目睹了与人类行为复杂性有关的各种原始现象。在时间、数据和记忆等资源受限制的情况下,在缺乏、不完整或暂时的前提下确定事件,是智能系统的一个重要方面。数据爆炸是智能系统最具有挑战性的研究问题之一;最优化地代表并储存这种多样性和数量庞大的数据,以提供人类行为。需要聪明但个性化的人的行为,但受资源的限制和用户的优先性的限制。知识以本体学的形式表现,对用户提出的询问获得明智的答复;但是,它不提供与用户背景相符的内容。为此,我们提出了一个模型,量化用户背景,提供语义背景推理。还提出了诊断性信仰算法(DBA),确定特定事件,并计算决定作为现有资源、房地、例外和需要的特性的功能的信心。我们在日常例行查询和实验结果方面进行经验性研究,显示对查询的答案及其信任因用户背景而不同。