SECC: Simultaneous extraction of context and community from pervasive signals

Nguyen Cong Thuong, Vu Nguyen, Flora D. Salim, Dinh Q. Phung
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引用次数: 12

Abstract

Understanding user contexts and group structures plays a central role in pervasive computing. These contexts and community structures are complex to mine from data collected in the wild due to the unprecedented growth of data, noise, uncertainties and complexities. Typical existing approaches would first extract the latent patterns to explain the human dynamics or behaviors and then use them as the way to consistently formulate numerical representations for community detection, often via a clustering method. While being able to capture highorder and complex representations, these two steps are performed separately. More importantly, they face a fundamental difficulty in determining the correct number of latent patterns and communities. This paper presents an approach that seamlessly addresses these challenges to simultaneously discover latent patterns and communities in a unified Bayesian nonparametric framework. Our Simultaneous Extraction of Context and Community (SECC) model roots in the nested Dirichlet process theory which allows nested structure to be built to explain data at multiple levels. We demonstrate our framework on three public datasets where the advantages of the proposed approach are validated.
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SECC:从无处不在的信号中同时提取上下文和社区
理解用户上下文和组结构在普适计算中起着核心作用。由于数据、噪音、不确定性和复杂性的空前增长,从野外收集的数据中挖掘这些环境和社区结构是复杂的。典型的现有方法是首先提取潜在模式来解释人类动态或行为,然后使用它们作为一致地制定社区检测的数字表示的方式,通常通过聚类方法。虽然能够捕获高阶和复杂的表示,但这两个步骤是分开执行的。更重要的是,他们在确定潜在模式和社区的正确数量方面面临着根本性的困难。本文提出了一种无缝解决这些挑战的方法,在统一的贝叶斯非参数框架中同时发现潜在的模式和社区。我们的同时提取上下文和社区(SECC)模型植根于嵌套狄利克雷过程理论,该理论允许建立嵌套结构来解释多层次的数据。我们在三个公共数据集上展示了我们的框架,其中所提出的方法的优势得到了验证。
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