Mining patterns of human behavior from large-scale mobile phone data has potential to understand certain phenomena in society. The study of such human-centric massive datasets requires new mathematical models. In this paper, we propose a probabilistic topic model that we call the distant n-gram topic model (DNTM) to address the problem of learning long duration human location sequences. The DNTM is based on Latent Dirichlet Allocation (LDA). We define the generative process for the model, derive the inference procedure and evaluate our model on real mobile data. We consider two different real-life human datasets, collected by mobile phone locations, the first considering GPS locations and the second considering cell tower connections. The D...
Classification and prediction of users’ whereabouts patterns is important for many emerging ubiquito...
We present a framework built from two Hierarchical Bayesian topic models to discover human location-...
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...
We present a new approach to address the problem of large sequence mining from big data. The particu...
We present a new approach to address the problem of large sequence mining from big data. The particu...
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 ...
In this work we address the problem of modeling varying time duration sequences for large-scale huma...
In this work we address the problem of modeling varying time duration sequences for large-scale huma...
In this work, we discover the daily location-driven routines that are contained in a massive real-li...
In this paper, we investigate the multimodal nature of cell phone data in terms of discovering recur...
There is relatively little work on the investigation of large-scale human data in terms of multimoda...
Research on human mobile behavior is becoming more available and important. One of the key challenge...
Classification of users' whereabouts patterns is important for many emerging ubiquitous computing ap...
Classification and prediction of users’ whereabouts patterns is important for many emerging ubiquito...
We present a framework built from two Hierarchical Bayesian topic models to discover human location-...
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...
We present a new approach to address the problem of large sequence mining from big data. The particu...
We present a new approach to address the problem of large sequence mining from big data. The particu...
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 ...
In this work we address the problem of modeling varying time duration sequences for large-scale huma...
In this work we address the problem of modeling varying time duration sequences for large-scale huma...
In this work, we discover the daily location-driven routines that are contained in a massive real-li...
In this paper, we investigate the multimodal nature of cell phone data in terms of discovering recur...
There is relatively little work on the investigation of large-scale human data in terms of multimoda...
Research on human mobile behavior is becoming more available and important. One of the key challenge...
Classification of users' whereabouts patterns is important for many emerging ubiquitous computing ap...
Classification and prediction of users’ whereabouts patterns is important for many emerging ubiquito...
We present a framework built from two Hierarchical Bayesian topic models to discover human location-...
We present a framework built from two Hierarchical Bayesian topic models to discover human location-...