Inferring abstract contexts and activities from heterogeneous data is vital to context-Aware ubiquitous applications but still remains one of the most challenging problems. Recent advances in Bayesian nonparametric machine learning, in particular the theory of topic models based on Hierarchical Dirichlet Process (HDP), has provided an elegant solution towards these challenges. However, limited existing methods have addressed the problem of inferring latent multifaceted activities and contexts from heterogeneous data sources such as those collected from mobile devices. In this paper, we extend the original HDP to model heterogeneous data using a richer structure of the base measure being a product-space. The proposed model, called product-sp...
Understanding user contexts and group structures plays a central role in pervasive computing. These ...
As we live our daily lives, our surroundings know about it. Our surroundings consist of people, but ...
As we live our daily lives, our surroundings know about it. Our surroundings consist of people, but ...
A fundamental task in pervasive computing is reliable acquisition of contexts from sensor data. This...
We present a framework built from two Hierarchical Bayesian topic models to discover human location-...
Mining patterns of human behavior from large-scale mobile phone data has potential to understand cer...
Understanding human activities is an important research topic, most noticeably in assisted-living an...
In this work, we discover the daily location-driven routines that are contained in a massive real-li...
Understanding human activities is an important research topic, most noticeably in assisted‑living an...
We present a framework built from two Hierarchical Bayesian topic models to discover human location-...
We introduce a new class of conditionally dependent Dirichlet processes (CDP) for hierarchical mixtu...
Mining patterns of human behavior from large-scale mobile phone data has potential to understand cer...
This paper introduces a framework for inferring human activities in mobile devices by computing spat...
This paper introduces a framework for inferring human activities in mobile devices by computing spat...
In this paper, we investigate the multimodal nature of cell phone data in terms of discovering recur...
Understanding user contexts and group structures plays a central role in pervasive computing. These ...
As we live our daily lives, our surroundings know about it. Our surroundings consist of people, but ...
As we live our daily lives, our surroundings know about it. Our surroundings consist of people, but ...
A fundamental task in pervasive computing is reliable acquisition of contexts from sensor data. This...
We present a framework built from two Hierarchical Bayesian topic models to discover human location-...
Mining patterns of human behavior from large-scale mobile phone data has potential to understand cer...
Understanding human activities is an important research topic, most noticeably in assisted-living an...
In this work, we discover the daily location-driven routines that are contained in a massive real-li...
Understanding human activities is an important research topic, most noticeably in assisted‑living an...
We present a framework built from two Hierarchical Bayesian topic models to discover human location-...
We introduce a new class of conditionally dependent Dirichlet processes (CDP) for hierarchical mixtu...
Mining patterns of human behavior from large-scale mobile phone data has potential to understand cer...
This paper introduces a framework for inferring human activities in mobile devices by computing spat...
This paper introduces a framework for inferring human activities in mobile devices by computing spat...
In this paper, we investigate the multimodal nature of cell phone data in terms of discovering recur...
Understanding user contexts and group structures plays a central role in pervasive computing. These ...
As we live our daily lives, our surroundings know about it. Our surroundings consist of people, but ...
As we live our daily lives, our surroundings know about it. Our surroundings consist of people, but ...