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Comparison of context-aware predictive modeling approaches: Semantic place in inferring mobile user behavior

机译:上下文感知的预测建模方法的比较:推断移动用户行为的语义位置

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Purpose - The aim of this paper is to empirically examine how to best incorporate such contextual data, such as location or the semantic place of mobile users, into mobile user behavior models. Acquiring such data has become technically easier than ever. The proper utilization of these data leads, hypothetically, to better understanding of mobile user behavior and, consequently, to enhanced mobile services. Design/methodology/approach - The paper systematically compares, under multiple experimental settings, the predictive performances of models built with three different approaches (pre-filtering, contextual modeling and post-filtering) used for incorporating contextual data into user behavior models. The comparisons focus on by which approach additional semantic place information can be best utilized for making the most accurate inferences on mobile user behavior. Real-life smartphone usage data are utilized in the analysis. Findings - The results demonstrate that none of the considered approaches uniformly dominate the others across all experimental settings. However, they show circumstance specific differences that need to be aligned with practical use cases for the best performance. Practical implications - Identifying the most suitable approaches for utilizing the semantic place (and other contextual) data is an important practical problem for electronic service providers, whose offerings are increasingly moving to the mobile domain and thus need to respond to the demands of mobility. Originality/value - The paper constitutes an initial step toward understanding and systematically evaluating different approaches for incorporating semantic place data into modeling mobile user behavior. Practitioners in the mobile service domain can apply the initial results and academics build upon them with more diverse experimental settings.
机译:目的-本文的目的是从经验上检验如何最好地将诸如移动用户的位置或语义位置之类的上下文数据纳入移动用户行为模型中。技术上,获取此类数据变得比以往更加容易。假设正确地利用这些数据可以更好地了解移动用户的行为,从而增强移动服务。设计/方法/方法-本文在多种实验设置下系统地比较了使用三种不同方法(预过滤,上下文建模和后过滤)构建的用于将上下文数据合并到用户行为模型中的模型的预测性能。比较集中于通过哪种方法,可以最好地利用附加语义位置信息来对移动用户行为做出最准确的推断。分析中将使用现实生活中的智能手机使用情况数据。发现-结果表明,在所有实验设置中,没有一种方法被认为是统一地主导其他方法。但是,它们显示出特定情况下的差异,需要与实际用例保持一致才能获得最佳性能。实际意义-对于电子服务提供商来说,确定最合适的方法来利用语义位置(和其他上下文)数据是一个重要的实际问题,电子服务提供商的产品正越来越多地转移到移动领域,因此需要响应移动性的需求。原创性/价值-本文是迈向理解和系统评估将语义位置数据纳入建模移动用户行为的不同方法的第一步。移动服务领域的从业人员可以应用最初的结果,并且学者们可以在这些结果的基础上进行更多实验设置。

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