Human mobility prediction is an important problem which has a large num-ber of applications, especially in context-aware services. This paper presents a study on location prediction using smartphone data, in which we address mod-eling and application aspects. Building personalized location prediction models from smartphone data remains a technical challenge due to data sparsity, which comes from the complexity of human behavior and the typically limited amount of data available for individual users. To address this problem, we propose an approach based on kernel density estimation, a popular smoothing technique for sparse data. Our approach contributes to existing work in two ways. First, our proposed model can estimate the probability that...
Mobile devices such as smartphones and smart watches are ubiquitous companions of humans’ daily life...
Abstract: Predicting the location of a mobile user in the near future can be used for a large number...
Mobile applications are required to operate in highly dynamic pervasive computing environments of dy...
Human mobility prediction is an important problem that has a large number of applications, especiall...
Human mobility prediction is an important problem which has a large num- ber of applications, especi...
Localizing people across space and over time is a relevant and challenging problem in many modern ap...
journal homepage: www.elsevier.com/locate/pmc A probabilistic kernel method for human mobility predi...
The growing ubiquity of smart-phones equipped with built-in sensors and global positioning...
We present the work that allowed us to win the Next-Place Prediction task of the Nokia Mobile Data C...
Human behavior is often complex and context-dependent. This paper presents a general technique to ex...
Abstract — Context-awareness is viewed as one of the most important aspects in the emerging pervasiv...
Abstract—This paper proposes a location prediction modelthat can be used for predicting a moving rou...
Location prediction systems that attempt to determine the mobility patterns of individuals in their ...
Understanding human mobility patterns is a significant research endeavour that has recently received...
In this work, the focus is on location data collected by smartphone applications. Specically, we pro...
Mobile devices such as smartphones and smart watches are ubiquitous companions of humans’ daily life...
Abstract: Predicting the location of a mobile user in the near future can be used for a large number...
Mobile applications are required to operate in highly dynamic pervasive computing environments of dy...
Human mobility prediction is an important problem that has a large number of applications, especiall...
Human mobility prediction is an important problem which has a large num- ber of applications, especi...
Localizing people across space and over time is a relevant and challenging problem in many modern ap...
journal homepage: www.elsevier.com/locate/pmc A probabilistic kernel method for human mobility predi...
The growing ubiquity of smart-phones equipped with built-in sensors and global positioning...
We present the work that allowed us to win the Next-Place Prediction task of the Nokia Mobile Data C...
Human behavior is often complex and context-dependent. This paper presents a general technique to ex...
Abstract — Context-awareness is viewed as one of the most important aspects in the emerging pervasiv...
Abstract—This paper proposes a location prediction modelthat can be used for predicting a moving rou...
Location prediction systems that attempt to determine the mobility patterns of individuals in their ...
Understanding human mobility patterns is a significant research endeavour that has recently received...
In this work, the focus is on location data collected by smartphone applications. Specically, we pro...
Mobile devices such as smartphones and smart watches are ubiquitous companions of humans’ daily life...
Abstract: Predicting the location of a mobile user in the near future can be used for a large number...
Mobile applications are required to operate in highly dynamic pervasive computing environments of dy...